Mercurial > repos > bgruening > sklearn_discriminant_classifier
view discriminant.xml @ 22:686d0c3e3b62 draft
planemo upload for repository https://github.com/bgruening/galaxytools/tree/master/tools/sklearn commit c64ccc5850c8e061a95fb64e07ed388384e82393
author | bgruening |
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date | Thu, 11 Oct 2018 03:36:59 -0400 |
parents | 56ddc98c484e |
children | 75bcb7c19fcf |
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<tool id="sklearn_discriminant_classifier" name="Discriminant Analysis" version="@VERSION@"> <description></description> <macros> <import>main_macros.xml</import> <!--macro name="priors"--> </macros> <expand macro="python_requirements"/> <expand macro="macro_stdio"/> <version_command>echo "@VERSION@"</version_command> <command><![CDATA[ python "$discriminant_script" '$inputs' ]]> </command> <configfiles> <inputs name="inputs"/> <configfile name="discriminant_script"> <![CDATA[ import sys import json import numpy as np import sklearn.discriminant_analysis import pandas with open("$__tool_directory__/sk_whitelist.json", "r") as f: sk_whitelist = json.load(f) exec(open("$__tool_directory__/utils.py").read(), globals()) input_json_path = sys.argv[1] with open(input_json_path, "r") as param_handler: params = json.load(param_handler) #if $selected_tasks.selected_task == "load": with open("$infile_model", 'rb') as model_handler: classifier_object = load_model(model_handler) header = 'infer' if params["selected_tasks"]["header"] else None data = pandas.read_csv("$selected_tasks.infile_data", sep='\t', header=header, index_col=None, parse_dates=True, encoding=None, tupleize_cols=False) prediction = classifier_object.predict(data) prediction_df = pandas.DataFrame(prediction) res = pandas.concat([data, prediction_df], axis=1) res.to_csv(path_or_buf = "$outfile_predict", sep="\t", index=False) #else: X, y = get_X_y(params, "$selected_tasks.selected_algorithms.input_options.infile1" ,"$selected_tasks.selected_algorithms.input_options.infile2") options = params["selected_tasks"]["selected_algorithms"]["options"] selected_algorithm = params["selected_tasks"]["selected_algorithms"]["selected_algorithm"] my_class = getattr(sklearn.discriminant_analysis, selected_algorithm) classifier_object = my_class(**options) classifier_object.fit(X, y) with open("$outfile_fit", 'wb') as out_handler: pickle.dump(classifier_object, out_handler, pickle.HIGHEST_PROTOCOL) #end if ]]> </configfile> </configfiles> <inputs> <expand macro="sl_Conditional" model="zip"> <param name="selected_algorithm" type="select" label="Classifier type"> <option value="LinearDiscriminantAnalysis" selected="true">Linear Discriminant Classifier</option> <option value="QuadraticDiscriminantAnalysis">Quadratic Discriminant Classifier</option> </param> <when value="LinearDiscriminantAnalysis"> <expand macro="sl_mixed_input"/> <section name="options" title="Advanced Options" expanded="False"> <param argument="solver" type="select" optional="true" label="Solver" help=""> <option value="svd" selected="true">Singular Value Decomposition</option> <option value="lsqr">Least Squares Solution</option> <option value="eigen">Eigenvalue Decomposition</option> </param> <!--param name="shrinkage"--> <!--expand macro="priors"/--> <param argument="n_components" type="integer" optional="true" value="" label="Number of components" help="Number of components for dimensionality reduction. ( always less than n_classes - 1 )"/> <expand macro="tol" default_value="0.0001" help_text="Rank estimation threshold used in SVD solver."/> <param argument="store_covariance" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="false" label="Store covariance" help="Compute class covariance matrix."/> </section> </when> <when value="QuadraticDiscriminantAnalysis"> <expand macro="sl_mixed_input"/> <section name="options" title="Advanced Options" expanded="False"> <!--expand macro="priors"/--> <param argument="reg_param" type="float" optional="true" value="0.0" label="Regularization coefficient" help="Covariance estimate regularizer."/> <expand macro="tol" default_value="0.00001" help_text="Rank estimation threshold used in SVD solver."/> <param argument="store_covariances" type="boolean" optional="true" truevalue="booltrue" falsevalue="boolflase" checked="false" label="Store covariances" help="Compute class covariance matrixes."/> </section> </when> </expand> </inputs> <expand macro="output"/> <tests> <test> <param name="infile1" value="train.tabular" ftype="tabular"/> <param name="infile2" value="train.tabular" ftype="tabular"/> <param name="header1" value="True"/> <param name="header2" value="True"/> <param name="col1" value="1,2,3,4"/> <param name="col2" value="5"/> <param name="selected_task" value="train"/> <param name="selected_algorithm" value="LinearDiscriminantAnalysis"/> <param name="solver" value="svd" /> <param name="store_covariance" value="True"/> <output name="outfile_fit" file="lda_model01" compare="sim_size" delta="500"/> </test> <test> <param name="infile1" value="train.tabular" ftype="tabular"/> <param name="infile2" value="train.tabular" ftype="tabular"/> <param name="header1" value="True"/> <param name="header2" value="True"/> <param name="col1" value="1,2,3,4"/> <param name="col2" value="5"/> <param name="selected_task" value="train"/> <param name="selected_algorithm" value="LinearDiscriminantAnalysis"/> <param name="solver" value="lsqr"/> <output name="outfile_fit" file="lda_model02" compare="sim_size" delta="500"/> </test> <test> <param name="infile1" value="train.tabular" ftype="tabular"/> <param name="infile2" value="train.tabular" ftype="tabular"/> <param name="header1" value="True"/> <param name="header2" value="True"/> <param name="col1" value="1,2,3,4"/> <param name="col2" value="5"/> <param name="selected_task" value="train"/> <param name="selected_algorithm" value="QuadraticDiscriminantAnalysis"/> <output name="outfile_fit" file="qda_model01" compare="sim_size" delta="500"/> </test> <test> <param name="infile_model" value="lda_model01" ftype="zip"/> <param name="infile_data" value="test.tabular" ftype="tabular"/> <param name="header" value="True"/> <param name="selected_task" value="load"/> <output name="outfile_predict" file="lda_prediction_result01.tabular"/> </test> <test> <param name="infile_model" value="lda_model02" ftype="zip"/> <param name="infile_data" value="test.tabular" ftype="tabular"/> <param name="header" value="True"/> <param name="selected_task" value="load"/> <output name="outfile_predict" file="lda_prediction_result02.tabular"/> </test> <test> <param name="infile_model" value="qda_model01" ftype="zip"/> <param name="infile_data" value="test.tabular" ftype="tabular"/> <param name="header" value="True"/> <param name="selected_task" value="load"/> <output name="outfile_predict" file="qda_prediction_result01.tabular"/> </test> </tests> <help><![CDATA[ ***What it does*** Linear and Quadratic Discriminant Analysis are two classic classifiers with a linear and a quadratic decision surface respectively. These classifiers are fast and easy to interprete. **1 - Training input** When you choose to train a model, discriminant analysis tool expects a tabular file with numeric values, the order of the columns being as follows: :: "feature_1" "feature_2" "..." "feature_n" "class_label" **Example for training data** The following training dataset contains 3 feature columns and a column containing class labels: :: 4.01163365529 -6.10797684314 8.29829894763 1 10.0788438916 1.59539821454 10.0684278289 0 -5.17607775503 -0.878286135332 6.92941850665 2 4.00975406235 -7.11847496542 9.3802423585 1 4.61204065139 -5.71217537352 9.12509610964 1 **2 - Trainig output** Based on your choice, this tool fits a sklearn discriminant_analysis.LinearDiscriminantAnalysis or discriminant_analysis.QuadraticDiscriminantAnalysis on the traning data and outputs the trained model in the form of pickled object in a text file. **3 - Prediction input** When you choose to load a model and do prediction, the tool expects an already trained Discriminant Analysis estimator and a tabular dataset as input. The dataset is a tabular file with new samples which you want to classify. It just contains feature columns. **Example for prediction data** :: 8.26530668997 2.96705005011 8.88881190248 2.96366327113 -3.76295851562 11.7113372463 8.13319631944 -0.223645298585 10.5820605308 .. class:: warningmark The number of feature columns must be the same in training and prediction datasets! **3 - Prediction output** The tool predicts the class labels for new samples and adds them as the last column to the prediction dataset. The new dataset then is output as a tabular file. The prediction output format should look like the training dataset. Discriminant Analysis is based on sklearn.discriminant_analysis library from Scikit-learn. For more information please refer to `Scikit-learn site`_. .. _`Scikit-learn site`: http://scikit-learn.org/stable/modules/lda_qda.html ]]></help> <expand macro="sklearn_citation"/> </tool>