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-rw-r--r--test/regression.rb86
1 files changed, 0 insertions, 86 deletions
diff --git a/test/regression.rb b/test/regression.rb
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index cdbac4b..0000000
--- a/test/regression.rb
+++ /dev/null
@@ -1,86 +0,0 @@
-require_relative "setup.rb"
-
-class LazarRegressionTest < MiniTest::Test
-
- def test_weighted_average
- training_dataset = Dataset.from_csv_file "#{DATA_DIR}/EPAFHM.medi_log10.csv"
- algorithms = {
- :similarity => {
- :min => 0
- },
- :prediction => {
- :method => "Algorithm::Regression.weighted_average",
- },
- }
- model = Model::Lazar.create training_dataset: training_dataset, algorithms: algorithms
- compound = Compound.from_smiles "CC(C)(C)CN"
- prediction = model.predict compound
- assert_equal -0.86, prediction[:value].round(2)
- assert_equal 88, prediction[:neighbors].size
- end
-
- def test_mpd_fingerprints
- training_dataset = Dataset.from_csv_file "#{DATA_DIR}/EPAFHM.medi_log10.csv"
- algorithms = {
- :descriptors => [ "MP2D" ]
- }
- model = Model::Lazar.create training_dataset: training_dataset, algorithms: algorithms
- compound = Compound.from_smiles "CCCSCCSCC"
- prediction = model.predict compound
- assert_equal 3, prediction[:neighbors].size
- assert_equal 1.37, prediction[:value].round(2)
- end
-
- def test_local_fingerprint_regression
- training_dataset = Dataset.from_csv_file "#{DATA_DIR}/EPAFHM.medi_log10.csv"
- model = Model::Lazar.create training_dataset: training_dataset
- compound = Compound.from_smiles "NC(=O)OCCC"
- prediction = model.predict compound
- refute_nil prediction[:value]
- refute_nil prediction[:prediction_interval]
- refute_empty prediction[:neighbors]
- end
-
- def test_local_physchem_regression
- training_dataset = Dataset.from_csv_file "#{DATA_DIR}/EPAFHM.medi_log10.csv"
- algorithms = {
- :descriptors => [PhysChem::OPENBABEL],
- :similarity => {
- :method => "Algorithm::Similarity.weighted_cosine",
- :min => 0.5
- },
- }
- model = Model::Lazar.create(training_dataset:training_dataset, algorithms:algorithms)
- p model
- compound = Compound.from_smiles "NC(=O)OCCC"
- prediction = model.predict compound
- refute_nil prediction[:value]
- end
-
- def test_local_physchem_regression_with_feature_selection
- training_dataset = Dataset.from_csv_file "#{DATA_DIR}/EPAFHM.medi_log10.csv"
- algorithms = {
- :descriptors => {
- :method => "calculated_properties",
- :types => ["OPENBABEL"]
- },
- :similarity => {
- :method => "Algorithm::Similarity.weighted_cosine",
- :min => 0.5
- },
- :feature_selection => {
- :method => "Algorithm::FeatureSelection.correlation_filter",
- },
- }
- model = Model::Lazar.create(training_dataset.features.first, training_dataset, algorithms)
- p model
- compound = Compound.from_smiles "NC(=O)OCCC"
- prediction = model.predict compound
- refute_nil prediction[:value]
- end
-
- def test_local_physchem_classification
- skip
- end
-
-end