Mercurial > repos > bgruening > sklearn_nn_classifier
diff main_macros.xml @ 0:b7d0fc23bfe4 draft
planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/sklearn commit 8cbb681224f23fa95783514f949c97d6c2c60966
author | bgruening |
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date | Sat, 04 Aug 2018 12:49:47 -0400 |
parents | |
children | 23fb598a09d7 |
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--- /dev/null Thu Jan 01 00:00:00 1970 +0000 +++ b/main_macros.xml Sat Aug 04 12:49:47 2018 -0400 @@ -0,0 +1,1515 @@ +<macros> + <token name="@VERSION@">0.9</token> + + <token name="@COLUMNS_FUNCTION@"> +def read_columns(f, c=None, c_option='by_index_number', return_df=False, **args): + data = pandas.read_csv(f, **args) + if c_option == 'by_index_number': + cols = list(map(lambda x: x - 1, c)) + data = data.iloc[:,cols] + if c_option == 'all_but_by_index_number': + cols = list(map(lambda x: x - 1, c)) + data.drop(data.columns[cols], axis=1, inplace=True) + if c_option == 'by_header_name': + cols = [e.strip() for e in c.split(',')] + data = data[cols] + if c_option == 'all_but_by_header_name': + cols = [e.strip() for e in c.split(',')] + data.drop(cols, axis=1, inplace=True) + y = data.values + if return_df: + return y, data + else: + return y + return y + </token> + +## generate an instance for one of sklearn.feature_selection classes + <token name="@FEATURE_SELECTOR_FUNCTION@"> +def feature_selector(inputs): + selector = inputs["selected_algorithm"] + selector = getattr(sklearn.feature_selection, selector) + options = inputs["options"] + + if inputs['selected_algorithm'] == 'SelectFromModel': + if not options['threshold'] or options['threshold'] == 'None': + options['threshold'] = None + if inputs['model_inputter']['input_mode'] == 'prefitted': + model_file = inputs['model_inputter']['fitted_estimator'] + with open(model_file, 'rb') as model_handler: + fitted_estimator = pickle.load(model_handler) + new_selector = selector(fitted_estimator, prefit=True, **options) + else: + estimator_json = inputs['model_inputter']["estimator_selector"] + estimator = get_estimator(estimator_json) + new_selector = selector(estimator, **options) + + elif inputs['selected_algorithm'] in ['RFE', 'RFECV']: + if 'scoring' in options and (not options['scoring'] or options['scoring'] == 'None'): + options['scoring'] = None + estimator=get_estimator(inputs["estimator_selector"]) + new_selector = selector(estimator, **options) + + elif inputs['selected_algorithm'] == "VarianceThreshold": + new_selector = selector(**options) + + else: + score_func = inputs["score_func"] + score_func = getattr(sklearn.feature_selection, score_func) + new_selector = selector(score_func, **options) + + return new_selector + </token> + + <token name="@GET_X_y_FUNCTION@"> +def get_X_y(params, file1, file2): + input_type = params["selected_tasks"]["selected_algorithms"]["input_options"]["selected_input"] + if input_type=="tabular": + header = 'infer' if params["selected_tasks"]["selected_algorithms"]["input_options"]["header1"] else None + column_option = params["selected_tasks"]["selected_algorithms"]["input_options"]["column_selector_options_1"]["selected_column_selector_option"] + if column_option in ["by_index_number", "all_but_by_index_number", "by_header_name", "all_but_by_header_name"]: + c = params["selected_tasks"]["selected_algorithms"]["input_options"]["column_selector_options_1"]["col1"] + else: + c = None + X = read_columns( + file1, + c = c, + c_option = column_option, + sep='\t', + header=header, + parse_dates=True + ) + else: + X = mmread(file1) + + header = 'infer' if params["selected_tasks"]["selected_algorithms"]["input_options"]["header2"] else None + column_option = params["selected_tasks"]["selected_algorithms"]["input_options"]["column_selector_options_2"]["selected_column_selector_option2"] + if column_option in ["by_index_number", "all_but_by_index_number", "by_header_name", "all_but_by_header_name"]: + c = params["selected_tasks"]["selected_algorithms"]["input_options"]["column_selector_options_2"]["col2"] + else: + c = None + y = read_columns( + file2, + c = c, + c_option = column_option, + sep='\t', + header=header, + parse_dates=True + ) + y=y.ravel() + return X, y + </token> + + <token name="@GET_SEARCH_PARAMS_FUNCTION@"> +def get_search_params(params_builder): + search_params = {} + + def safe_eval(literal): + + FROM_SCIPY_STATS = [ 'bernoulli', 'binom', 'boltzmann', 'dlaplace', 'geom', 'hypergeom', + 'logser', 'nbinom', 'planck', 'poisson', 'randint', 'skellam', 'zipf' ] + + FROM_NUMPY_RANDOM = [ 'beta', 'binomial', 'bytes', 'chisquare', 'choice', 'dirichlet', 'division', + 'exponential', 'f', 'gamma', 'geometric', 'gumbel', 'hypergeometric', + 'laplace', 'logistic', 'lognormal', 'logseries', 'mtrand', 'multinomial', + 'multivariate_normal', 'negative_binomial', 'noncentral_chisquare', 'noncentral_f', + 'normal', 'pareto', 'permutation', 'poisson', 'power', 'rand', 'randint', + 'randn', 'random', 'random_integers', 'random_sample', 'ranf', 'rayleigh', + 'sample', 'seed', 'set_state', 'shuffle', 'standard_cauchy', 'standard_exponential', + 'standard_gamma', 'standard_normal', 'standard_t', 'triangular', 'uniform', + 'vonmises', 'wald', 'weibull', 'zipf' ] + + # File opening and other unneeded functions could be dropped + UNWANTED = ['open', 'type', 'dir', 'id', 'str', 'repr'] + + # Allowed symbol table. Add more if needed. + new_syms = { + 'np_arange': getattr(np, 'arange'), + 'ensemble_ExtraTreesClassifier': getattr(ensemble, 'ExtraTreesClassifier') + } + + syms = make_symbol_table(use_numpy=False, **new_syms) + + for method in FROM_SCIPY_STATS: + syms['scipy_stats_' + method] = getattr(scipy.stats, method) + + for func in FROM_NUMPY_RANDOM: + syms['np_random_' + func] = getattr(np.random, func) + + for key in UNWANTED: + syms.pop(key, None) + + aeval = Interpreter(symtable=syms, use_numpy=False, minimal=False, + no_if=True, no_for=True, no_while=True, no_try=True, + no_functiondef=True, no_ifexp=True, no_listcomp=False, + no_augassign=False, no_assert=True, no_delete=True, + no_raise=True, no_print=True) + + return aeval(literal) + + for p in params_builder['param_set']: + search_p = p['search_param_selector']['search_p'] + if search_p.strip() == '': + continue + param_type = p['search_param_selector']['selected_param_type'] + + lst = search_p.split(":") + assert (len(lst) == 2), "Error, make sure there is one and only one colon in search parameter input." + literal = lst[1].strip() + ev = safe_eval(literal) + if param_type == "final_estimator_p": + search_params["estimator__" + lst[0].strip()] = ev + else: + search_params["preprocessing_" + param_type[5:6] + "__" + lst[0].strip()] = ev + + return search_params + </token> + + <token name="@GET_ESTIMATOR_FUNCTION@"> +def get_estimator(estimator_json): + estimator_module = estimator_json['selected_module'] + estimator_cls = estimator_json['selected_estimator'] + + if estimator_module == "xgboost": + cls = getattr(xgboost, estimator_cls) + else: + module = getattr(sklearn, estimator_module) + cls = getattr(module, estimator_cls) + + estimator = cls() + + estimator_params = estimator_json['text_params'].strip() + if estimator_params != "": + try: + params = ast.literal_eval('{' + estimator_params + '}') + except ValueError: + sys.exit("Unsupported parameter input: `%s`" %estimator_params) + estimator.set_params(**params) + + return estimator + </token> + + <xml name="python_requirements"> + <requirements> + <requirement type="package" version="2.7">python</requirement> + <requirement type="package" version="0.19.1">scikit-learn</requirement> + <requirement type="package" version="0.22.0">pandas</requirement> + <requirement type="package" version="0.72.1">xgboost</requirement> + <yield /> + </requirements> + </xml> + + <xml name="macro_stdio"> + <stdio> + <exit_code range="1:" level="fatal" description="Error occurred. Please check Tool Standard Error"/> + </stdio> + </xml> + + + <!--Generic interface--> + + <xml name="sl_Conditional" token_train="tabular" token_data="tabular" token_model="txt"> + <conditional name="selected_tasks"> + <param name="selected_task" type="select" label="Select a Classification Task"> + <option value="train" selected="true">Train a model</option> + <option value="load">Load a model and predict</option> + </param> + <when value="load"> + <param name="infile_model" type="data" format="@MODEL@" label="Models" help="Select a model file."/> + <param name="infile_data" type="data" format="@DATA@" label="Data (tabular)" help="Select the dataset you want to classify."/> + <param name="header" type="boolean" optional="True" truevalue="booltrue" falsevalue="boolfalse" checked="False" label="Does the dataset contain header:" /> + <conditional name="prediction_options"> + <param name="prediction_option" type="select" label="Select the type of prediction"> + <option value="predict">Predict class labels</option> + <option value="advanced">Include advanced options</option> + </param> + <when value="predict"> + </when> + <when value="advanced"> + </when> + </conditional> + </when> + <when value="train"> + <conditional name="selected_algorithms"> + <yield /> + </conditional> + </when> + </conditional> + </xml> + + <xml name="advanced_section"> + <section name="options" title="Advanced Options" expanded="False"> + <yield /> + </section> + </xml> + + + <!--Generalized Linear Models--> + <xml name="loss" token_help=" " token_select="false"> + <param argument="loss" type="select" label="Loss function" help="@HELP@"> + <option value="squared_loss" selected="@SELECT@">squared loss</option> + <option value="huber">huber</option> + <option value="epsilon_insensitive">epsilon insensitive</option> + <option value="squared_epsilon_insensitive">squared epsilon insensitive</option> + <yield/> + </param> + </xml> + + <xml name="penalty" token_help=" "> + <param argument="penalty" type="select" label="Penalty (regularization term)" help="@HELP@"> + <option value="l2" selected="true">l2</option> + <option value="l1">l1</option> + <option value="elasticnet">elastic net</option> + <option value="none">none</option> + <yield/> + </param> + </xml> + + <xml name="l1_ratio" token_default_value="0.15" token_help=" "> + <param argument="l1_ratio" type="float" value="@DEFAULT_VALUE@" label="Elastic Net mixing parameter" help="@HELP@"/> + </xml> + + <xml name="epsilon" token_default_value="0.1" token_help="Used if loss is ‘huber’, ‘epsilon_insensitive’, or ‘squared_epsilon_insensitive’. "> + <param argument="epsilon" type="float" value="@DEFAULT_VALUE@" label="Epsilon (epsilon-sensitive loss functions only)" help="@HELP@"/> + </xml> + + <xml name="learning_rate_s" token_help=" " token_selected1="false" token_selected2="false"> + <param argument="learning_rate" type="select" optional="true" label="Learning rate schedule" help="@HELP@"> + <option value="optimal" selected="@SELECTED1@">optimal</option> + <option value="constant">constant</option> + <option value="invscaling" selected="@SELECTED2@">inverse scaling</option> + <yield/> + </param> + </xml> + + <xml name="eta0" token_default_value="0.0" token_help="Used with ‘constant’ or ‘invscaling’ schedules. "> + <param argument="eta0" type="float" value="@DEFAULT_VALUE@" label="Initial learning rate" help="@HELP@"/> + </xml> + + <xml name="power_t" token_default_value="0.5" token_help=" "> + <param argument="power_t" type="float" value="@DEFAULT_VALUE@" label="Exponent for inverse scaling learning rate" help="@HELP@"/> + </xml> + + <xml name="normalize" token_checked="false" token_help=" "> + <param argument="normalize" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="Normalize samples before training" help=" "/> + </xml> + + <xml name="copy_X" token_checked="true" token_help=" "> + <param argument="copy_X" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="Use a copy of samples" help="If false, samples would be overwritten. "/> + </xml> + + <xml name="ridge_params"> + <expand macro="normalize"/> + <expand macro="alpha" default_value="1.0"/> + <expand macro="fit_intercept"/> + <expand macro="max_iter" default_value=""/> + <expand macro="tol" default_value="0.001" help_text="Precision of the solution. "/> + <!--class_weight--> + <expand macro="copy_X"/> + <param argument="solver" type="select" value="" label="Solver to use in the computational routines" help=" "> + <option value="auto" selected="true">auto</option> + <option value="svd">svd</option> + <option value="cholesky">cholesky</option> + <option value="lsqr">lsqr</option> + <option value="sparse_cg">sparse_cg</option> + <option value="sag">sag</option> + </param> + <expand macro="random_state"/> + </xml> + + <!--Ensemble methods--> + <xml name="n_estimators" token_default_value="10" token_help=" "> + <param argument="n_estimators" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of trees in the forest" help="@HELP@"/> + </xml> + + <xml name="max_depth" token_default_value="" token_help=" "> + <param argument="max_depth" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Maximum depth of the tree" help="@HELP@"/> + </xml> + + <xml name="min_samples_split" token_type="integer" token_default_value="2" token_help=" "> + <param argument="min_samples_split" type="@TYPE@" optional="true" value="@DEFAULT_VALUE@" label="Minimum number of samples required to split an internal node" help="@HELP@"/> + </xml> + + <xml name="min_samples_leaf" token_type="integer" token_default_value="1" token_label="Minimum number of samples in newly created leaves" token_help=" "> + <param argument="min_samples_leaf" type="@TYPE@" optional="true" value="@DEFAULT_VALUE@" label="@LABEL@" help="@HELP@"/> + </xml> + + <xml name="min_weight_fraction_leaf" token_default_value="0.0" token_help=" "> + <param argument="min_weight_fraction_leaf" type="float" optional="true" value="@DEFAULT_VALUE@" label="Minimum weighted fraction of the input samples required to be at a leaf node" help="@HELP@"/> + </xml> + + <xml name="max_leaf_nodes" token_default_value="" token_help=" "> + <param argument="max_leaf_nodes" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Maximum number of leaf nodes in best-first method" help="@HELP@"/> + </xml> + + <xml name="min_impurity_decrease" token_default_value="0" token_help=" "> + <param argument="min_impurity_decrease" type="float" value="@DEFAULT_VALUE@" optional="true" label="The threshold value of impurity for stopping node splitting" help="@HELP@"/> + </xml> + + <xml name="bootstrap" token_checked="true" token_help=" "> + <param argument="bootstrap" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="@CHECKED@" label="Use bootstrap samples for building trees." help="@HELP@"/> + </xml> + + <xml name="criterion" token_help=" "> + <param argument="criterion" type="select" label="Function to measure the quality of a split" help=" "> + <option value="gini" selected="true">Gini impurity</option> + <option value="entropy">Information gain</option> + <yield/> + </param> + </xml> + + <xml name="criterion2" token_help=""> + <param argument="criterion" type="select" label="Function to measure the quality of a split" > + <option value="mse">mse - mean squared error</option> + <option value="mae">mae - mean absolute error</option> + <yield/> + </param> + </xml> + + <xml name="oob_score" token_checked="false" token_help=" "> + <param argument="oob_score" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="Use out-of-bag samples to estimate the generalization error" help="@HELP@"/> + </xml> + + <xml name="max_features"> + <conditional name="select_max_features"> + <param argument="max_features" type="select" label="max_features"> + <option value="auto" selected="true">auto - max_features=n_features</option> + <option value="sqrt">sqrt - max_features=sqrt(n_features)</option> + <option value="log2">log2 - max_features=log2(n_features)</option> + <option value="number_input">I want to type the number in or input None type</option> + </param> + <when value="auto"> + </when> + <when value="sqrt"> + </when> + <when value="log2"> + </when> + <when value="number_input"> + <param name="num_max_features" type="float" value="" optional="true" label="Input max_features number:" help="If int, consider the number of features at each split; If float, then max_features is a percentage and int(max_features * n_features) features are considered at each split."/> + </when> + </conditional> + </xml> + + <xml name="verbose" token_default_value="0" token_help="If 1 then it prints progress and performance once in a while. If greater than 1 then it prints progress and performance for every tree."> + <param argument="verbose" type="integer" value="@DEFAULT_VALUE@" optional="true" label="Enable verbose output" help="@HELP@"/> + </xml> + + <xml name="learning_rate" token_default_value="1.0" token_help=" "> + <param argument="learning_rate" type="float" optional="true" value="@DEFAULT_VALUE@" label="Learning rate" help="@HELP@"/> + </xml> + + <xml name="subsample" token_help=" "> + <param argument="subsample" type="float" value="1.0" optional="true" label="The fraction of samples to be used for fitting the individual base learners" help="@HELP@"/> + </xml> + + <xml name="presort"> + <param argument="presort" type="select" label="Whether to presort the data to speed up the finding of best splits in fitting" > + <option value="auto" selected="true">auto</option> + <option value="true">true</option> + <option value="false">false</option> + </param> + </xml> + + <!--Parameters--> + <xml name="tol" token_default_value="0.0" token_help_text="Early stopping heuristics based on the relative center changes. Set to default (0.0) to disable this convergence detection."> + <param argument="tol" type="float" optional="true" value="@DEFAULT_VALUE@" label="Tolerance" help="@HELP_TEXT@"/> + </xml> + + <xml name="n_clusters" token_default_value="8"> + <param argument="n_clusters" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of clusters" help=" "/> + </xml> + + <xml name="fit_intercept" token_checked="true"> + <param argument="fit_intercept" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="Estimate the intercept" help="If false, the data is assumed to be already centered."/> + </xml> + + <xml name="n_jobs" token_default_value="1" token_label="The number of jobs to run in parallel for both fit and predict"> + <param argument="n_jobs" type="integer" value="@DEFAULT_VALUE@" optional="true" label="@LABEL@" help="If -1, then the number of jobs is set to the number of cores"/> + </xml> + + <xml name="n_iter" token_default_value="5" token_help_text="The number of passes over the training data (aka epochs). "> + <param argument="n_iter" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of iterations" help="@HELP_TEXT@"/> + </xml> + + <xml name="shuffle" token_checked="true" token_help_text=" " token_label="Shuffle data after each iteration"> + <param argument="shuffle" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="@LABEL@" help="@HELP_TEXT@"/> + </xml> + + <xml name="random_state" token_default_value="" token_help_text="Integer number. The seed of the pseudo random number generator to use when shuffling the data. A fixed seed allows reproducible results."> + <param argument="random_state" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Random seed number" help="@HELP_TEXT@"/> + </xml> + + <xml name="warm_start" token_checked="true" token_help_text="When set to True, reuse the solution of the previous call to fit as initialization,otherwise, just erase the previous solution."> + <param argument="warm_start" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="@CHECKED@" label="Perform warm start" help="@HELP_TEXT@"/> + </xml> + + <xml name="C" token_default_value="1.0" token_help_text="Penalty parameter C of the error term."> + <param argument="C" type="float" optional="true" value="@DEFAULT_VALUE@" label="Penalty parameter" help="@HELP_TEXT@"/> + </xml> + + <!--xml name="class_weight" token_default_value="" token_help_text=""> + <param argument="class_weight" type="" optional="true" value="@DEFAULT_VALUE@" label="" help="@HELP_TEXT@"/> + </xml--> + + <xml name="alpha" token_default_value="0.0001" token_help_text="Constant that multiplies the regularization term if regularization is used. "> + <param argument="alpha" type="float" optional="true" value="@DEFAULT_VALUE@" label="Regularization coefficient" help="@HELP_TEXT@"/> + </xml> + + <xml name="n_samples" token_default_value="100" token_help_text="The total number of points equally divided among clusters."> + <param argument="n_samples" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of samples" help="@HELP_TEXT@"/> + </xml> + + <xml name="n_features" token_default_value="2" token_help_text="Number of different numerical properties produced for each sample."> + <param argument="n_features" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of features" help="@HELP_TEXT@"/> + </xml> + + <xml name="noise" token_default_value="0.0" token_help_text="Floating point number. "> + <param argument="noise" type="float" optional="true" value="@DEFAULT_VALUE@" label="Standard deviation of the Gaussian noise added to the data" help="@HELP_TEXT@"/> + </xml> + + <xml name="C" token_default_value="1.0" token_help_text="Penalty parameter C of the error term. "> + <param argument="C" type="float" optional="true" value="@DEFAULT_VALUE@" label="Penalty parameter" help="@HELP_TEXT@"/> + </xml> + + <xml name="max_iter" token_default_value="300" token_label="Maximum number of iterations per single run" token_help_text=" "> + <param argument="max_iter" type="integer" optional="true" value="@DEFAULT_VALUE@" label="@LABEL@" help="@HELP_TEXT@"/> + </xml> + + <xml name="n_init" token_default_value="10" > + <param argument="n_init" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Number of runs with different centroid seeds" help=" "/> + </xml> + + <xml name="init"> + <param argument="init" type="select" label="Centroid initialization method" help="''k-means++'' selects initial cluster centers that speed up convergence. ''random'' chooses k observations (rows) at random from data as initial centroids."> + <option value="k-means++">k-means++</option> + <option value="random">random</option> + </param> + </xml> + + <xml name="gamma" token_default_value="1.0" token_label="Scaling parameter" token_help_text=" "> + <param argument="gamma" type="float" optional="true" value="@DEFAULT_VALUE@" label="@LABEL@" help="@HELP_TEXT@"/> + </xml> + + <xml name="degree" token_default_value="3" token_label="Degree of the polynomial" token_help_text=" "> + <param argument="degree" type="integer" optional="true" value="@DEFAULT_VALUE@" label="@LABEL@" help="@HELP_TEXT@"/> + </xml> + + <xml name="coef0" token_default_value="1" token_label="Zero coefficient" token_help_text=" "> + <param argument="coef0" type="integer" optional="true" value="@DEFAULT_VALUE@" label="@LABEL@" help="@HELP_TEXT@"/> + </xml> + + <xml name="pos_label" token_default_value=""> + <param argument="pos_label" type="integer" optional="true" value="@DEFAULT_VALUE@" label="Label of the positive class" help=" "/> + </xml> + + <xml name="average"> + <param argument="average" type="select" optional="true" label="Averaging type" help=" "> + <option value="micro">Calculate metrics globally by counting the total true positives, false negatives and false positives. (micro)</option> + <option value="samples">Calculate metrics for each instance, and find their average. Only meaningful for multilabel. (samples)</option> + <option value="macro">Calculate metrics for each label, and find their unweighted mean. This does not take label imbalance into account. (macro)</option> + <option value="weighted">Calculate metrics for each label, and find their average, weighted by support (the number of true instances for each label). This alters ‘macro’ to account for label imbalance; it can result in an F-score that is not between precision and recall. (weighted)</option> + <option value="None">None</option> + <yield/> + </param> + </xml> + + <xml name="beta"> + <param argument="beta" type="float" value="1.0" label="The strength of recall versus precision in the F-score" help=" "/> + </xml> + + + <!--Data interface--> + + <xml name="samples_tabular" token_multiple1="false" token_multiple2="false"> + <param name="infile1" type="data" format="tabular" label="Training samples dataset:"/> + <param name="header1" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="False" label="Does the dataset contain header:" /> + <conditional name="column_selector_options_1"> + <expand macro="samples_column_selector_options" multiple="@MULTIPLE1@"/> + </conditional> + <param name="infile2" type="data" format="tabular" label="Dataset containing class labels:"/> + <param name="header2" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="False" label="Does the dataset contain header:" /> + <conditional name="column_selector_options_2"> + <expand macro="samples_column_selector_options" column_option="selected_column_selector_option2" col_name="col2" multiple="@MULTIPLE2@" infile="infile2"/> + </conditional> + <yield/> + </xml> + + <xml name="samples_column_selector_options" token_column_option="selected_column_selector_option" token_col_name="col1" token_multiple="False" token_infile="infile1"> + <param name="@COLUMN_OPTION@" type="select" label="Choose how to select data by column:"> + <option value="by_index_number" selected="true">Select columns by column index number(s)</option> + <option value="by_header_name">Select columns by column header name(s)</option> + <option value="all_but_by_index_number">All columns but by column index number(s)</option> + <option value="all_but_by_header_name">All columns but by column header name(s)</option> + <option value="all_columns">All columns</option> + </param> + <when value="by_index_number"> + <param name="@COL_NAME@" multiple="@MULTIPLE@" type="data_column" data_ref="@INFILE@" label="Select target column(s):"/> + </when> + <when value="by_header_name"> + <param name="@COL_NAME@" type="text" value="" label="Type header name(s):" help="Comma-separated string. For example: target1,target2"/> + </when> + <when value="all_but_by_index_number"> + <param name="@COL_NAME@" multiple="@MULTIPLE@" type="data_column" data_ref="@INFILE@" label="Select target column(s):"/> + </when> + <when value="all_but_by_header_name"> + <param name="@COL_NAME@" type="text" value="" label="Type header name(s):" help="Comma-separated string. For example: target1,target2"/> + </when> + <when value="all_columns"> + </when> + </xml> + + <xml name="clf_inputs_extended" token_label1=" " token_label2=" " token_multiple="False"> + <conditional name="true_columns"> + <param name="selected_input1" type="select" label="Select the input type of true labels dataset:"> + <option value="tabular" selected="true">Tabular</option> + <option value="sparse">Sparse</option> + </param> + <when value="tabular"> + <param name="infile1" type="data" label="@LABEL1@"/> + <param name="col1" type="data_column" data_ref="infile1" label="Select the target column:"/> + </when> + <when value="sparse"> + <param name="infile1" type="data" format="txt" label="@LABEL1@"/> + </when> + </conditional> + <conditional name="predicted_columns"> + <param name="selected_input2" type="select" label="Select the input type of predicted labels dataset:"> + <option value="tabular" selected="true">Tabular</option> + <option value="sparse">Sparse</option> + </param> + <when value="tabular"> + <param name="infile2" type="data" label="@LABEL2@"/> + <param name="col2" multiple="@MULTIPLE@" type="data_column" data_ref="infile2" label="Select target column(s):"/> + </when> + <when value="sparse"> + <param name="infile2" type="data" format="txt" label="@LABEL1@"/> + </when> + </conditional> + </xml> + + <xml name="clf_inputs" token_label1="Dataset containing true labels (tabular):" token_label2="Dataset containing predicted values (tabular):" token_multiple1="False" token_multiple="False"> + <param name="infile1" type="data" format="tabular" label="@LABEL1@"/> + <param name="header1" type="boolean" optional="True" truevalue="booltrue" falsevalue="boolfalse" checked="False" label="Does the dataset contain header:" /> + <conditional name="column_selector_options_1"> + <expand macro="samples_column_selector_options" multiple="@MULTIPLE1@"/> + </conditional> + <param name="infile2" type="data" format="tabular" label="@LABEL2@"/> + <param name="header2" type="boolean" optional="True" truevalue="booltrue" falsevalue="boolfalse" checked="False" label="Does the dataset contain header:" /> + <conditional name="column_selector_options_2"> + <expand macro="samples_column_selector_options" column_option="selected_column_selector_option2" col_name="col2" multiple="@MULTIPLE@" infile="infile2"/> + </conditional> + </xml> + + <xml name="multiple_input" token_name="input_files" token_max_num="10" token_format="txt" token_label="Sparse matrix file (.mtx, .txt)" token_help_text="Specify a sparse matrix file in .txt format."> + <repeat name="@NAME@" min="1" max="@MAX_NUM@" title="Select input file(s):"> + <param name="input" type="data" format="@FORMAT@" label="@LABEL@" help="@HELP_TEXT@"/> + </repeat> + </xml> + + <xml name="sparse_target" token_label1="Select a sparse matrix:" token_label2="Select the tabular containing true labels:" token_multiple="False" token_format1="txt" token_format2="tabular" token_help1="" token_help2=""> + <param name="infile1" type="data" format="@FORMAT1@" label="@LABEL1@" help="@HELP1@"/> + <param name="infile2" type="data" format="@FORMAT2@" label="@LABEL2@" help="@HELP2@"/> + <param name="col2" multiple="@MULTIPLE@" type="data_column" data_ref="infile2" label="Select target column(s):"/> + </xml> + + <xml name="sl_mixed_input"> + <conditional name="input_options"> + <param name="selected_input" type="select" label="Select input type:"> + <option value="tabular" selected="true">tabular data</option> + <option value="sparse">sparse matrix</option> + </param> + <when value="tabular"> + <expand macro="samples_tabular" multiple1="true"/> + </when> + <when value="sparse"> + <expand macro="sparse_target"/> + </when> + </conditional> + </xml> + + <!--Advanced options--> + <xml name="nn_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <yield/> + <param argument="weights" type="select" label="Weight function" help="Used in prediction."> + <option value="uniform" selected="true">Uniform weights. All points in each neighborhood are weighted equally. (Uniform)</option> + <option value="distance">Weight points by the inverse of their distance. (Distance)</option> + </param> + <param argument="algorithm" type="select" label="Neighbor selection algorithm" help=" "> + <option value="auto" selected="true">Auto</option> + <option value="ball_tree">BallTree</option> + <option value="kd_tree">KDTree</option> + <option value="brute">Brute-force</option> + </param> + <param argument="leaf_size" type="integer" value="30" label="Leaf size" help="Used with BallTree and KDTree. Affects the time and memory usage of the constructed tree."/> + <!--param name="metric"--> + <!--param name="p"--> + <!--param name="metric_params"--> + </section> + </xml> + + <xml name="svc_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <yield/> + <param argument="kernel" type="select" optional="true" label="Kernel type" help="Kernel type to be used in the algorithm. If none is given, ‘rbf’ will be used."> + <option value="rbf" selected="true">rbf</option> + <option value="linear">linear</option> + <option value="poly">poly</option> + <option value="sigmoid">sigmoid</option> + <option value="precomputed">precomputed</option> + </param> + <param argument="degree" type="integer" optional="true" value="3" label="Degree of the polynomial (polynomial kernel only)" help="Ignored by other kernels. dafault : 3 "/> + <!--TODO: param argument="gamma" float, optional (default=’auto’) --> + <param argument="coef0" type="float" optional="true" value="0.0" label="Zero coefficient (polynomial and sigmoid kernels only)" + help="Independent term in kernel function. dafault: 0.0 "/> + <param argument="shrinking" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use the shrinking heuristic" help=" "/> + <param argument="probability" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="false" + label="Enable probability estimates. " help="This must be enabled prior to calling fit, and will slow down that method."/> + <!-- param argument="cache_size"--> + <!--expand macro="class_weight"/--> + <expand macro="tol" default_value="0.001" help_text="Tolerance for stopping criterion. "/> + <expand macro="max_iter" default_value="-1" label="Solver maximum number of iterations" help_text="Hard limit on iterations within solver, or -1 for no limit."/> + <!--param argument="decision_function_shape"--> + <expand macro="random_state" help_text="Integer number. The seed of the pseudo random number generator to use when shuffling the data for probability estimation. A fixed seed allows reproducible results."/> + </section> + </xml> + + <xml name="spectral_clustering_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <expand macro="n_clusters"/> + <param argument="eigen_solver" type="select" value="" label="Eigen solver" help="The eigenvalue decomposition strategy to use."> + <option value="arpack" selected="true">arpack</option> + <option value="lobpcg">lobpcg</option> + <option value="amg">amg</option> + <!--None--> + </param> + <expand macro="random_state"/> + <expand macro="n_init"/> + <param argument="gamma" type="float" optional="true" value="1.0" label="Kernel scaling factor" help="Scaling factor of RBF, polynomial, exponential chi^2 and sigmoid affinity kernel. Ignored for affinity=''nearest_neighbors''."/> + <param argument="affinity" type="select" label="Affinity" help="Affinity kernel to use. "> + <option value="rbf" selected="true">RBF</option> + <option value="precomputed">precomputed</option> + <option value="nearest_neighbors">Nearset neighbors</option> + </param> + <param argument="n_neighbors" type="integer" optional="true" value="10" label="Number of neighbors" help="Number of neighbors to use when constructing the affinity matrix using the nearest neighbors method. Ignored for affinity=''rbf''"/> + <!--param argument="eigen_tol"--> + <param argument="assign_labels" type="select" label="Assign labels" help="The strategy to use to assign labels in the embedding space."> + <option value="kmeans" selected="true">kmeans</option> + <option value="discretize">discretize</option> + </param> + <param argument="degree" type="integer" optional="true" value="3" + label="Degree of the polynomial (polynomial kernel only)" help="Ignored by other kernels. dafault : 3 "/> + <param argument="coef0" type="integer" optional="true" value="1" + label="Zero coefficient (polynomial and sigmoid kernels only)" help="Ignored by other kernels. dafault : 1 "/> + <!--param argument="kernel_params"--> + </section> + </xml> + + <xml name="minibatch_kmeans_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <expand macro="n_clusters"/> + <expand macro="init"/> + <expand macro="n_init" default_value="3"/> + <expand macro="max_iter" default_value="100"/> + <expand macro="tol" help_text="Early stopping heuristics based on normalized center change. To disable set to 0.0 ."/> + <expand macro="random_state"/> + <param argument="batch_size" type="integer" optional="true" value="100" label="Batch size" help="Size of the mini batches."/> + <!--param argument="compute_labels"--> + <param argument="max_no_improvement" type="integer" optional="true" value="10" label="Maximum number of improvement attempts" help=" + Convergence detection based on inertia (the consecutive number of mini batches that doe not yield an improvement on the smoothed inertia). + To disable, set max_no_improvement to None. "/> + <param argument="init_size" type="integer" optional="true" value="" label="Number of random initialization samples" help="Number of samples to randomly sample for speeding up the initialization . ( default: 3 * batch_size )"/> + <param argument="reassignment_ratio" type="float" optional="true" value="0.01" label="Re-assignment ratio" help="Controls the fraction of the maximum number of counts for a center to be reassigned. Higher values yield better clustering results."/> + </section> + </xml> + + <xml name="kmeans_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <expand macro="n_clusters"/> + <expand macro="init"/> + <expand macro="n_init"/> + <expand macro="max_iter"/> + <expand macro="tol" default_value="0.0001" help_text="Relative tolerance with regards to inertia to declare convergence."/> + <!--param argument="precompute_distances"/--> + <expand macro="random_state"/> + <param argument="copy_x" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" label="Use a copy of data for precomputing distances" help="Mofifying the original data introduces small numerical differences caused by subtracting and then adding the data mean."/> + </section> + </xml> + + <xml name="birch_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="threshold" type="float" optional="true" value="0.5" label="Subcluster radius threshold" help="The radius of the subcluster obtained by merging a new sample; the closest subcluster should be less than the threshold to avoid a new subcluster."/> + <param argument="branching_factor" type="integer" optional="true" value="50" label="Maximum number of subclusters per branch" help="Maximum number of CF subclusters in each node."/> + <expand macro="n_clusters" default_value="3"/> + <!--param argument="compute_labels"/--> + </section> + </xml> + + <xml name="dbscan_advanced_options"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="eps" type="float" optional="true" value="0.5" label="Maximum neighborhood distance" help="The maximum distance between two samples for them to be considered as in the same neighborhood."/> + <param argument="min_samples" type="integer" optional="true" value="5" label="Minimal core point density" help="The number of samples (or total weight) in a neighborhood for a point (including the point itself) to be considered as a core point."/> + <param argument="metric" type="text" optional="true" value="euclidean" label="Metric" help="The metric to use when calculating distance between instances in a feature array."/> + <param argument="algorithm" type="select" label="Pointwise distance computation algorithm" help="The algorithm to be used by the NearestNeighbors module to compute pointwise distances and find nearest neighbors."> + <option value="auto" selected="true">auto</option> + <option value="ball_tree">ball_tree</option> + <option value="kd_tree">kd_tree</option> + <option value="brute">brute</option> + </param> + <param argument="leaf_size" type="integer" optional="true" value="30" label="Leaf size" help="Leaf size passed to BallTree or cKDTree. Memory and time efficieny factor in tree constrution and querying."/> + </section> + </xml> + + <xml name="clustering_algorithms_options"> + <conditional name="algorithm_options"> + <param name="selected_algorithm" type="select" label="Clustering Algorithm"> + <option value="KMeans" selected="true">KMeans</option> + <option value="SpectralClustering">Spectral Clustering</option> + <option value="MiniBatchKMeans">Mini Batch KMeans</option> + <option value="DBSCAN">DBSCAN</option> + <option value="Birch">Birch</option> + </param> + <when value="KMeans"> + <expand macro="kmeans_advanced_options"/> + </when> + <when value="DBSCAN"> + <expand macro="dbscan_advanced_options"/> + </when> + <when value="Birch"> + <expand macro="birch_advanced_options"/> + </when> + <when value="SpectralClustering"> + <expand macro="spectral_clustering_advanced_options"/> + </when> + <when value="MiniBatchKMeans"> + <expand macro="minibatch_kmeans_advanced_options"/> + </when> + </conditional> + </xml> + + <xml name="distance_metrics"> + <param argument="metric" type="select" label="Distance metric" help=" "> + <option value="euclidean" selected="true">euclidean</option> + <option value="cityblock">cityblock</option> + <option value="cosine">cosine</option> + <option value="l1">l1</option> + <option value="l2">l2</option> + <option value="manhattan">manhattan</option> + <yield/> + </param> + </xml> + + <xml name="distance_nonsparse_metrics"> + <option value="braycurtis">braycurtis</option> + <option value="canberra">canberra</option> + <option value="chebyshev">chebyshev</option> + <option value="correlation">correlation</option> + <option value="dice">dice</option> + <option value="hamming">hamming</option> + <option value="jaccard">jaccard</option> + <option value="kulsinski">kulsinski</option> + <option value="mahalanobis">mahalanobis</option> + <option value="matching">matching</option> + <option value="minkowski">minkowski</option> + <option value="rogerstanimoto">rogerstanimoto</option> + <option value="russellrao">russellrao</option> + <option value="seuclidean">seuclidean</option> + <option value="sokalmichener">sokalmichener</option> + <option value="sokalsneath">sokalsneath</option> + <option value="sqeuclidean">sqeuclidean</option> + <option value="yule">yule</option> + </xml> + + <xml name="pairwise_kernel_metrics"> + <param argument="metric" type="select" label="Pirwise Kernel metric" help=" "> + <option value="rbf" selected="true">rbf</option> + <option value="sigmoid">sigmoid</option> + <option value="polynomial">polynomial</option> + <option value="linear" selected="true">linear</option> + <option value="chi2">chi2</option> + <option value="additive_chi2">additive_chi2</option> + </param> + </xml> + + <xml name="sparse_pairwise_metric_functions"> + <param name="selected_metric_function" type="select" label="Select the pairwise metric you want to compute:"> + <option value="euclidean_distances" selected="true">Euclidean distance matrix</option> + <option value="pairwise_distances">Distance matrix</option> + <option value="pairwise_distances_argmin">Minimum distances between one point and a set of points</option> + <yield/> + </param> + </xml> + + <xml name="pairwise_metric_functions"> + <option value="additive_chi2_kernel" >Additive chi-squared kernel</option> + <option value="chi2_kernel">Exponential chi-squared kernel</option> + <option value="linear_kernel">Linear kernel</option> + <option value="manhattan_distances">L1 distances</option> + <option value="pairwise_kernels">Kernel</option> + <option value="polynomial_kernel">Polynomial kernel</option> + <option value="rbf_kernel">Gaussian (rbf) kernel</option> + <option value="laplacian_kernel">Laplacian kernel</option> + </xml> + + <xml name="sparse_pairwise_condition"> + <when value="pairwise_distances"> + <section name="options" title="Advanced Options" expanded="False"> + <expand macro="distance_metrics"> + <yield/> + </expand> + </section> + </when> + <when value="euclidean_distances"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="squared" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="false" + label="Return squared Euclidean distances" help=" "/> + </section> + </when> + </xml> + + <xml name="argmin_distance_condition"> + <when value="pairwise_distances_argmin"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="axis" type="integer" optional="true" value="1" label="Axis" help="Axis along which the argmin and distances are to be computed."/> + <expand macro="distance_metrics"> + <yield/> + </expand> + <param argument="batch_size" type="integer" optional="true" value="500" label="Batch size" help="Number of rows to be processed in each batch run."/> + </section> + </when> + </xml> + + <xml name="sparse_preprocessors"> + <param name="selected_pre_processor" type="select" label="Select a preprocessor:"> + <option value="StandardScaler" selected="true">Standard Scaler (Standardizes features by removing the mean and scaling to unit variance)</option> + <option value="Binarizer">Binarizer (Binarizes data)</option> + <option value="Imputer">Imputer (Completes missing values)</option> + <option value="MaxAbsScaler">Max Abs Scaler (Scales features by their maximum absolute value)</option> + <option value="Normalizer">Normalizer (Normalizes samples individually to unit norm)</option> + <yield/> + </param> + </xml> + + <xml name="sparse_preprocessors_ext"> + <expand macro="sparse_preprocessors"> + <option value="KernelCenterer">Kernel Centerer (Centers a kernel matrix)</option> + <option value="MinMaxScaler">Minmax Scaler (Scales features to a range)</option> + <option value="PolynomialFeatures">Polynomial Features (Generates polynomial and interaction features)</option> + <option value="RobustScaler">Robust Scaler (Scales features using outlier-invariance statistics)</option> + </expand> + </xml> + + <xml name="sparse_preprocessor_options"> + <when value="Binarizer"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use a copy of data for precomputing binarization" help=" "/> + <param argument="threshold" type="float" optional="true" value="0.0" + label="Threshold" + help="Feature values below or equal to this are replaced by 0, above it by 1. Threshold may not be less than 0 for operations on sparse matrices. "/> + </section> + </when> + <when value="Imputer"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use a copy of data for precomputing imputation" help=" "/> + <param argument="strategy" type="select" optional="true" label="Imputation strategy" help=" "> + <option value="mean" selected="true">Replace missing values using the mean along the axis</option> + <option value="median">Replace missing values using the median along the axis</option> + <option value="most_frequent">Replace missing using the most frequent value along the axis</option> + </param> + <param argument="missing_values" type="text" optional="true" value="NaN" + label="Placeholder for missing values" help="For missing values encoded as numpy.nan, use the string value “NaN”"/> + <param argument="axis" type="boolean" optional="true" truevalue="1" falsevalue="0" + label="Impute along axis = 1" help="If fasle, axis = 0 is selected for imputation. "/> + <!--param argument="axis" type="select" optional="true" label="The axis along which to impute" help=" "> + <option value="0" selected="true">Impute along columns</option> + <option value="1">Impute along rows</option> + </param--> + </section> + </when> + <when value="StandardScaler"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use a copy of data for performing inplace scaling" help=" "/> + <param argument="with_mean" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Center the data before scaling" help=" "/> + <param argument="with_std" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Scale the data to unit variance (or unit standard deviation)" help=" "/> + </section> + </when> + <when value="MaxAbsScaler"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use a copy of data for precomputing scaling" help=" "/> + </section> + </when> + <when value="Normalizer"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="norm" type="select" optional="true" label="The norm to use to normalize non zero samples" help=" "> + <option value="l1" selected="true">l1</option> + <option value="l2">l2</option> + <option value="max">max</option> + </param> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="true" + label="Use a copy of data for precomputing row normalization" help=" "/> + </section> + </when> + <yield/> + </xml> + + <xml name="sparse_preprocessor_options_ext"> + <expand macro="sparse_preprocessor_options"> + <when value="KernelCenterer"> + <section name="options" title="Advanced Options" expanded="False"> + </section> + </when> + <when value="MinMaxScaler"> + <section name="options" title="Advanced Options" expanded="False"> + <!--feature_range--> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="true" + label="Use a copy of data for precomputing normalization" help=" "/> + </section> + </when> + <when value="PolynomialFeatures"> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="degree" type="integer" optional="true" value="2" label="The degree of the polynomial features " help=""/> + <param argument="interaction_only" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="false" label="Produce interaction features only" help="(Features that are products of at most degree distinct input features) "/> + <param argument="include_bias" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="true" label="Include a bias column" help="Feature in which all polynomial powers are zero "/> + </section> + </when> + <when value="RobustScaler"> + <section name="options" title="Advanced Options" expanded="False"> + <!--=True, =True, copy=True--> + <param argument="with_centering" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="true" + label="Center the data before scaling" help=" "/> + <param argument="with_scaling" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="true" + label="Scale the data to interquartile range" help=" "/> + <param argument="copy" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="true" + label="Use a copy of data for inplace scaling" help=" "/> + </section> + </when> + </expand> + </xml> + + <xml name="fs_selectfrommodel_prefitted"> + <param name="input_mode" type="select" label="Construct a new estimator from a selection list?" > + <option value="new" selected="true">Yes</option> + <option value="prefitted">No. Load a prefitted estimator</option> + </param> + <when value="new"> + <expand macro="estimator_selector_all"/> + </when> + <when value="prefitted"> + <param name="fitted_estimator" type="data" format='zip' label="Load a prefitted estimator" /> + </when> + </xml> + + <xml name="fs_selectfrommodel_no_prefitted"> + <param name="input_mode" type="select" label="Construct a new estimator from a selection list?" > + <option value="new" selected="true">Yes</option> + </param> + <when value="new"> + <expand macro="estimator_selector_all"/> + </when> + </xml> + + <xml name="feature_selection_all"> + <conditional name="fs_algorithm_selector"> + <param name="selected_algorithm" type="select" label="Select a feature selection algorithm"> + <option value="SelectKBest" selected="true">SelectKBest - Select features according to the k highest scores</option> + <option value="SelectFromModel">SelectFromModel - Meta-transformer for selecting features based on importance weights</option> + <option value="GenericUnivariateSelect">GenericUnivariateSelect - Univariate feature selector with configurable strategy</option> + <option value="SelectPercentile">SelectPercentile - Select features according to a percentile of the highest scores</option> + <option value="SelectFpr">SelectFpr - Filter: Select the p-values below alpha based on a FPR test</option> + <option value="SelectFdr">SelectFdr - Filter: Select the p-values for an estimated false discovery rate</option> + <option value="SelectFwe">SelectFwe - Filter: Select the p-values corresponding to Family-wise error rate</option> + <option value="RFE">RFE - Feature ranking with recursive feature elimination</option> + <option value="RFECV">RFECV - Feature ranking with recursive feature elimination and cross-validated selection of the best number of features</option> + <option value="VarianceThreshold">VarianceThreshold - Feature selector that removes all low-variance features</option> + </param> + <when value="SelectFromModel"> + <conditional name="model_inputter"> + <yield/> + </conditional> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="threshold" type="text" value="" optional="true" label="threshold" help="The threshold value to use for feature selection. e.g. 'mean', 'median', '1.25*mean'." /> + <param argument="norm_order" type="integer" value="1" label="norm_order" help="Order of the norm used to filter the vectors of coefficients below threshold in the case where the coef_ attribute of the estimator is of dimension 2. " /> + </section> + </when> + <when value="GenericUnivariateSelect"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="mode" type="select" label="Feature selection mode"> + <option value="percentile">percentile</option> + <option value="k_best">k_best</option> + <option value="fpr">fpr</option> + <option value="fdr">fdr</option> + <option value="fwe">fwe</option> + </param> + <param argument="param" type="float" value="" optional="true" label="Parameter of the corresponding mode" help="float or int depending on the feature selection mode" /> + </section> + </when> + <when value="SelectPercentile"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="percentile" type="integer" value="10" optional="True" label="Percent of features to keep" /> + </section> + </when> + <when value="SelectKBest"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="k" type="integer" value="10" optional="True" label="Number of top features to select" help="No 'all' option is supported." /> + </section> + </when> + <when value="SelectFpr"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="alpha" type="float" value="" optional="True" label="Alpha" help="The highest p-value for features to be kept."/> + </section> + </when> + <when value="SelectFdr"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="alpha" type="float" value="" optional="True" label="Alpha" help="The highest uncorrected p-value for features to keep."/> + </section> + </when> + <when value="SelectFwe"> + <expand macro="feature_selection_score_function" /> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="alpha" type="float" value="" optional="True" label="Alpha" help="The highest uncorrected p-value for features to keep."/> + </section> + </when> + <when value="RFE"> + <expand macro="estimator_selector_all"/> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="n_features_to_select" type="integer" value="" optional="true" label="n_features_to_select" help="The number of features to select. If None, half of the features are selected." /> + <param argument="step" type="float" value="1" label="step" optional="true" help="Default = 1. " /> + <param argument="verbose" type="integer" value="0" label="verbose" help="Controls verbosity of output." /> + </section> + </when> + <when value="RFECV"> + <expand macro="estimator_selector_all"/> + <section name="options" title="Advanced Options" expanded="False"> + <param argument="step" type="float" value="1" label="step" optional="true" help="Default = 1. " /> + <param argument="cv" type="integer" value="" optional="true" label="cv" help="Determines the cross-validation splitting strategy" /> + <param argument="scoring" type="text" value="" optional="true" label="scoring" help="A string (see model evaluation documentation) or a scorer callable object / function with signature scorer(estimator, X, y)."/> + <param argument="verbose" type="integer" value="0" label="verbose" help="Controls verbosity of output." /> + <param argument="n_jobs" type="integer" value="1" label="n_jobs" help="Number of cores to run in parallel while fitting across folds. Defaults to 1 core."/> + </section> + </when> + <when value="VarianceThreshold"> + <section name="options" title="Options" expanded="False"> + <param argument="threshold" type="float" value="" optional="True" label="Threshold" help="Features with a training-set variance lower than this threshold will be removed."/> + </section> + </when> + <!--when value="chi2"> + </when> + <when value="f_classif"> + </when> + <when value="f_regression"> + </when> + <when value="mutual_info_classif"> + </when> + <when value="mutual_info_regression"> + </when--> + </conditional> + </xml> + + <xml name="feature_selection_score_function"> + <param argument="score_func" type="select" label="Select a score function"> + <option value="chi2">chi2 - Compute chi-squared stats between each non-negative feature and class</option> + <option value="f_classif">f_classif - Compute the ANOVA F-value for the provided sample</option> + <option value="f_regression">f_regression - Univariate linear regression tests</option> + <option value="mutual_info_classif">mutual_info_classif - Estimate mutual information for a discrete target variable</option> + <option value="mutual_info_regression">mutual_info_regression - Estimate mutual information for a continuous target variable</option> + </param> + </xml> + + <xml name="feature_selection_output_mothods"> + <conditional name="output_method_selector"> + <param name="selected_method" type="select" label="Select an output method:"> + <option value="fit_transform">fit_transform - Fit to data, then transform it</option> + <option value="get_support">get_support - Get a mask, or integer index, of the features selected</option> + </param> + <when value="fit_transform"> + <!--**fit_params--> + </when> + <when value="get_support"> + <param name="indices" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolfalse" checked="false" label="Indices" help="If True, the return value will be an array of integers, rather than a boolean mask."/> + </when> + </conditional> + </xml> + + <xml name="model_validation_common_options"> + <param argument="cv" type="integer" value="" optional="true" label="cv" help="The number of folds in a (Stratified)KFold" /> + <expand macro="n_jobs"/> + <expand macro="verbose"/> + <yield/> + </xml> + + <xml name="scoring"> + <param argument="scoring" type="text" value="" optional="true" label="scoring" help="A metric used to evaluate the estimator"/> + </xml> + + <xml name="pre_dispatch" token_type="hidden" token_default_value="all" token_help="Number of predispatched jobs for parallel execution"> + <param argument="pre_dispatch" type="@TYPE@" value="@DEFAULT_VALUE@" optional="true" label="pre_dispatch" help="@HELP@"/> + </xml> + + <xml name="search_cv_estimator"> + <param name="infile_pipeline" type="data" format="zip" label="Choose the dataset containing pipeline object:"/> + <section name="search_params_builder" title="Search parameters Builder" expanded="true"> + <repeat name="param_set" min="1" max="20" title="Parameter setting for search:"> + <conditional name="search_param_selector"> + <param name="selected_param_type" type="select" label="Choose the transformation the parameter belongs to"> + <option value="final_estimator_p" selected="true">Final estimator</option> + <option value="prep_1_p">Pre-processing step #1</option> + <option value="prep_2_p">Pre-processing step #2</option> + <option value="prep_3_p">Pre-processing step #3</option> + <option value="prep_4_p">Pre-processing step #4</option> + <option value="prep_5_p">Pre-processing step #5</option> + </param> + <when value="final_estimator_p"> + <expand macro="search_param_input" /> + </when> + <when value="prep_1_p"> + <expand macro="search_param_input" label="Pre_processing component #1 parameter:" help="One parameter per box. For example: with_centering: [True, False]."/> + </when> + <when value="prep_2_p"> + <expand macro="search_param_input" label="Pre_processing component #2 parameter:" help="One parameter per box. For example: k: [3, 5, 7, 9]. See bottom for more examples"/> + </when> + <when value="prep_3_p"> + <expand macro="search_param_input" label="Pre_processing component #3 parameter:" help="One parameter per box. For example: n_components: [1, 10, 100, 1000]. See bottom for more examples"/> + </when> + <when value="prep_4_p"> + <expand macro="search_param_input" label="Pre_processing component #4 parameter:" help="One parameter per box. For example: n_components: [1, 10, 100, 1000]. See bottom for more examples"/> + </when> + <when value="prep_5_p"> + <expand macro="search_param_input" label="Pre_processing component #5 parameter:" help="One parameter per box. For example: affinity: ['euclidean', 'l1', 'l2', 'manhattan']. See bottom for more examples"/> + </when> + </conditional> + </repeat> + </section> + </xml> + + <xml name="search_param_input" token_label="Estimator parameter:" token_help="One parameter per box. For example: C: [1, 10, 100, 1000]. See bottom for more examples"> + <param name="search_p" type="text" value="" size="100" optional="true" label="@LABEL@" help="@HELP@"> + <sanitizer> + <valid initial="default"> + <add value="'"/> + <add value="""/> + <add value="["/> + <add value="]"/> + </valid> + </sanitizer> + </param> + </xml> + + <xml name="search_cv_options"> + <expand macro="scoring"/> + <expand macro="model_validation_common_options"/> + <expand macro="pre_dispatch" value="2*n_jobs" help="Controls the number of jobs that get dispatched during parallel execution"/> + <param argument="iid" type="boolean" truevalue="booltrue" falsevalue="boolfalse" checked="true" label="iid" help="If True, data is identically distributed across the folds"/> + <param argument="refit" type="boolean" truevalue="booltrue" falsevalue="boolfalse" checked="true" label="refit" help="Refit an estimator using the best found parameters on the whole dataset."/> + <!--error_score--> + <param argument="return_train_score" type="boolean" truevalue="booltrue" falsevalue="boolfalse" checked="false" label="return_train_score" help=""/> + </xml> + + <xml name="estimator_selector_all"> + <conditional name="estimator_selector"> + <param name="selected_module" type="select" label="Choose the module that contains target estimator:" > + <option value="svm" selected="true">sklearn.svm</option> + <option value="linear_model">sklearn.linear_model</option> + <option value="ensemble">sklearn.ensemble</option> + <option value="naive_bayes">sklearn.naive_bayes</option> + <option value="tree">sklearn.tree</option> + <option value="neighbors">sklearn.neighbors</option> + <option value="xgboost">xgboost</option> + <!--more--> + </param> + <when value="svm"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="LinearSVC" selected="true">LinearSVC</option> + <option value="LinearSVR">LinearSVR</option> + <option value="NuSVC">NuSVC</option> + <option value="NuSVR">NuSVR</option> + <option value="OneClassSVM">OneClassSVM</option> + <option value="SVC">SVC</option> + <option value="SVR">SVR</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="linear_model"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="ARDRegression" selected="true">ARDRegression</option> + <option value="BayesianRidge">BayesianRidge</option> + <option value="ElasticNet">ElasticNet</option> + <option value="ElasticNetCV">ElasticNetCV</option> + <option value="HuberRegressor">HuberRegressor</option> + <option value="Lars">Lars</option> + <option value="LarsCV">LarsCV</option> + <option value="Lasso">Lasso</option> + <option value="LassoCV">LassoCV</option> + <option value="LassoLars">LassoLars</option> + <option value="LassoLarsCV">LassoLarsCV</option> + <option value="LassoLarsIC">LassoLarsIC</option> + <option value="LinearRegression">LinearRegression</option> + <option value="LogisticRegression">LogisticRegression</option> + <option value="LogisticRegressionCV">LogisticRegressionCV</option> + <option value="MultiTaskLasso">MultiTaskLasso</option> + <option value="MultiTaskElasticNet">MultiTaskElasticNet</option> + <option value="MultiTaskLassoCV">MultiTaskLassoCV</option> + <option value="MultiTaskElasticNetCV">MultiTaskElasticNetCV</option> + <option value="OrthogonalMatchingPursuit">OrthogonalMatchingPursuit</option> + <option value="OrthogonalMatchingPursuitCV">OrthogonalMatchingPursuitCV</option> + <option value="PassiveAggressiveClassifier">PassiveAggressiveClassifier</option> + <option value="PassiveAggressiveRegressor">PassiveAggressiveRegressor</option> + <option value="Perceptron">Perceptron</option> + <option value="RANSACRegressor">RANSACRegressor</option> + <option value="Ridge">Ridge</option> + <option value="RidgeClassifier">RidgeClassifier</option> + <option value="RidgeClassifierCV">RidgeClassifierCV</option> + <option value="RidgeCV">RidgeCV</option> + <option value="SGDClassifier">SGDClassifier</option> + <option value="SGDRegressor">SGDRegressor</option> + <option value="TheilSenRegressor">TheilSenRegressor</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="ensemble"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="AdaBoostClassifier" selected="true">AdaBoostClassifier</option> + <option value="AdaBoostRegressor">AdaBoostRegressor</option> + <option value="BaggingClassifier">BaggingClassifier</option> + <option value="BaggingRegressor">BaggingRegressor</option> + <option value="ExtraTreesClassifier">ExtraTreesClassifier</option> + <option value="ExtraTreesRegressor">ExtraTreesRegressor</option> + <option value="GradientBoostingClassifier">GradientBoostingClassifier</option> + <option value="GradientBoostingRegressor">GradientBoostingRegressor</option> + <option value="IsolationForest">IsolationForest</option> + <option value="RandomForestClassifier">RandomForestClassifier</option> + <option value="RandomForestRegressor">RandomForestRegressor</option> + <option value="RandomTreesEmbedding">RandomTreesEmbedding</option> + <option value="VotingClassifier">VotingClassifier</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="naive_bayes"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="BernoulliNB" selected="true">BernoulliNB</option> + <option value="GaussianNB">GaussianNB</option> + <option value="MultinomialNB">MultinomialNB</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="tree"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="DecisionTreeClassifier" selected="true">DecisionTreeClassifier</option> + <option value="DecisionTreeRegressor">DecisionTreeRegressor</option> + <option value="ExtraTreeClassifier">ExtraTreeClassifier</option> + <option value="ExtraTreeRegressor">ExtraTreeRegressor</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="neighbors"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="BallTree" selected="true">BallTree</option> + <option value="DistanceMetric">DistanceMetric</option> + <option value="KDTree">KDTree</option> + <option value="KernelDensity">KernelDensity</option> + <option value="KNeighborsClassifier">KNeighborsClassifier</option> + <option value="KNeighborsRegressor">KNeighborsRegressor</option> + <option value="LocalOutlierFactor">LocalOutlierFactor</option> + <option value="RadiusNeighborsClassifier">RadiusNeighborsClassifier</option> + <option value="RadiusNeighborsRegressor">RadiusNeighborsRegressor</option> + <option value="NearestCentroid">NearestCentroid</option> + <option value="NearestNeighbors">NearestNeighbors</option> + </param> + <expand macro="estimator_params_text"/> + </when> + <when value="xgboost"> + <param name="selected_estimator" type="select" label="Choose estimator class:"> + <option value="XGBRegressor" selected="true">XGBRegressor</option> + <option value="XGBClassifier">XGBClassifier</option> + </param> + <expand macro="estimator_params_text"/> + </when> + </conditional> + </xml> + + <xml name="estimator_params_text" token_label="Type in estimator parameters:" + token_help="Parameters in dictionary without braces ('{}'), e.g., 'C': 1, 'kernel': 'linear'. No double quotes. Leave this box blank for default estimator."> + <param name="text_params" type="text" value="" size="50" optional="true" label="@LABEL@" help="@HELP@"> + <sanitizer> + <valid initial="default"> + <add value="'"/> + </valid> + </sanitizer> + </param> + </xml> + + <xml name="kernel_approximation_all"> + <conditional name="kernel_approximation_selector"> + <param name="select_algorithm" type="select" label="Choose a kernel approximation algorithm:"> + <option value="Nystroem" selected="true">Nystroem</option> + <option value="RBFSampler">RBFSampler</option> + <option value="AdditiveChi2Sampler">AdditiveChi2Sampler</option> + <option value="SkewedChi2Sampler">SkewedChi2Sampler</option> + </param> + <when value="Nystroem"> + <expand macro="estimator_params_text" label="Type in kernel approximater parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'kernel': 'rbf'. No double quotes. Leave this box blank for class default."/> + </when> + <when value="RBFSampler"> + <expand macro="estimator_params_text" label="Type in kernel approximater parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'gamma': 1.0. No double quotes. Leave this box blank for class default."/> + </when> + <when value="AdditiveChi2Sampler"> + <expand macro="estimator_params_text" label="Type in kernel approximater parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'sample_steps': 2, 'sample_interval': None. No double quotes. Leave this box blank for class default."/> + </when> + <when value="SkewedChi2Sampler"> + <expand macro="estimator_params_text" label="Type in kernel approximater parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'skewedness': 1.0. No double quotes. Leave this box blank for class default."/> + </when> + </conditional> + </xml> + + <xml name="matrix_decomposition_all"> + <conditional name="matrix_decomposition_selector"> + <param name="select_algorithm" type="select" label="Choose a matrix decomposition algorithm:"> + <option value="DictionaryLearning" selected="true">DictionaryLearning</option> + <option value="FactorAnalysis">FactorAnalysis</option> + <option value="FastICA">FastICA</option> + <option value="IncrementalPCA">IncrementalPCA</option> + <option value="KernelPCA">KernelPCA</option> + <option value="LatentDirichletAllocation">LatentDirichletAllocation</option> + <option value="MiniBatchDictionaryLearning">MiniBatchDictionaryLearning</option> + <option value="MiniBatchSparsePCA">MiniBatchSparsePCA</option> + <option value="NMF">NMF</option> + <option value="PCA">PCA</option> + <option value="SparsePCA">SparsePCA</option> + <option value="SparseCoder">SparseCoder</option> + <option value="TruncatedSVD">TruncatedSVD</option> + </param> + <when value="DictionaryLearning"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': None, 'alpha': 1.0. No double quotes. Leave this box blank for class default."/> + </when> + <when value="FactorAnalysis"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="FastICA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="IncrementalPCA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'whiten': False. No double quotes. Leave this box blank for class default."/> + </when> + <when value="KernelPCA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="LatentDirichletAllocation"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="MiniBatchDictionaryLearning"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="MiniBatchSparsePCA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="NMF"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'init': 'random'. No double quotes. Leave this box blank for class default."/> + </when> + <when value="PCA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="SparsePCA"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 100, 'random_state': 42. No double quotes. Leave this box blank for class default."/> + </when> + <when value="SparseCoder"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'transform_algorithm': 'omp', 'transform_alpha': 1.0. No double quotes. Leave this box blank for class default."/> + </when> + <when value="TruncatedSVD"> + <expand macro="estimator_params_text" label="Type in maxtrix decomposition parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_components': 2, 'algorithm': 'randomized'. No double quotes. Leave this box blank for default estimator."/> + </when> + </conditional> + </xml> + + <xml name="FeatureAgglomeration"> + <conditional name="FeatureAgglomeration_selector"> + <param name="select_algorithm" type="select" label="Choose the algorithm:"> + <option value="FeatureAgglomeration" selected="true">FeatureAgglomeration</option> + </param> + <when value="FeatureAgglomeration"> + <expand macro="estimator_params_text" label="Type in parameters:" + help="Parameters in dictionary without braces ('{}'), e.g., 'n_clusters': 2, 'affinity': 'euclidean'. No double quotes. Leave this box blank for class default."/> + </when> + </conditional> + </xml> + <!-- Outputs --> + + <xml name="output"> + <outputs> + <data format="tabular" name="outfile_predict"> + <filter>selected_tasks['selected_task'] == 'load'</filter> + </data> + <data format="zip" name="outfile_fit"> + <filter>selected_tasks['selected_task'] == 'train'</filter> + </data> + </outputs> + </xml> + + <!--Citations--> + <xml name="eden_citation"> + <citations> + <citation type="doi">10.5281/zenodo.15094</citation> + </citations> + </xml> + + <xml name="sklearn_citation"> + <citations> + <citation type="bibtex"> + @article{scikit-learn, + title={Scikit-learn: Machine Learning in {P}ython}, + author={Pedregosa, F. and Varoquaux, G. and Gramfort, A. and Michel, V. + and Thirion, B. and Grisel, O. and Blondel, M. and Prettenhofer, P. + and Weiss, R. and Dubourg, V. and Vanderplas, J. and Passos, A. and + Cournapeau, D. and Brucher, M. and Perrot, M. and Duchesnay, E.}, + journal={Journal of Machine Learning Research}, + volume={12}, + pages={2825--2830}, + year={2011} + url = {https://github.com/scikit-learn/scikit-learn} + } + </citation> + </citations> + </xml> + + <xml name="scipy_citation"> + <citations> + <citation type="bibtex"> + @Misc{, + author = {Eric Jones and Travis Oliphant and Pearu Peterson and others}, + title = {{SciPy}: Open source scientific tools for {Python}}, + year = {2001--}, + url = "http://www.scipy.org/", + note = {[Online; accessed 2016-04-09]} + } + </citation> + </citations> + </xml> + +</macros>