def test_simpleVectorizer_triple(): text = '<drug id="1">Erlotinib</drug> is a common treatment for <cancer id="2">NSCLC</cancer> which targets <gene id="3">EGFR</gene>. <relation type="druginfo" drug="1" disease="2" gene="3" />' corpus = kindred.Corpus(text, loadFromSimpleTag=True) parser = kindred.Parser() parser.parse(corpus) candidateBuilder = kindred.CandidateBuilder(entityCount=3) candidateRelations = candidateBuilder.build(corpus) # We'll just get the vectors for the entityTypes vectorizer = kindred.Vectorizer(entityCount=3, featureChoice=["entityTypes"]) vectors = vectorizer.fit_transform(candidateRelations) assert vectors.shape == (6, 9) expected = [(0, 1), (0, 3), (0, 8), (1, 1), (1, 5), (1, 6), (2, 0), (2, 4), (2, 8), (3, 0), (3, 5), (3, 7), (4, 2), (4, 4), (4, 6), (5, 2), (5, 3), (5, 7)] rows, cols = vectors.nonzero() rowsWithCols = list(zip(rows.tolist(), cols.tolist())) assert sorted(expected) == sorted(rowsWithCols) vectorsCSR = vectors.tocsr() for r, c in expected: assert vectorsCSR[r, c] == 1.0
def test_simpleVectorizer_binary(): text = '<drug id="1">Erlotinib</drug> is a common treatment for <cancer id="2">NSCLC</cancer>. <drug id="3">Aspirin</drug> is the main cause of <disease id="4">boneitis</disease> . <relation type="treats" subj="1" obj="2" />' corpus = kindred.Corpus(text, loadFromSimpleTag=True) parser = kindred.Parser() parser.parse(corpus) candidateBuilder = kindred.CandidateBuilder() candidateRelations = candidateBuilder.build(corpus) # We'll just get the vectors for the entityTypes vectorizer = kindred.Vectorizer(featureChoice=["entityTypes"]) vectors = vectorizer.fit_transform(candidateRelations) assert vectors.shape == (4, 6) expected = [(0, 2), (1, 0), (2, 2), (3, 1), (0, 3), (1, 5), (2, 4), (3, 5)] rows, cols = vectors.nonzero() rowsWithCols = list(zip(rows.tolist(), cols.tolist())) assert sorted(expected) == sorted(rowsWithCols) vectorsCSR = vectors.tocsr() for r, c in expected: assert vectorsCSR[r, c] == 1.0
def test_vectorizer_entityTypes_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5, negativeCount=5) corpus2, _ = generateTestData(positiveCount=10, negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) chosenFeatures = ["entityTypes"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures, tfidf=False) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) assert matrix1.shape == (8, 6) assert matrix2.shape == (18, 6) colnames = vectorizer.getFeatureNames() expectedNames = [ 'selectedtokentypes_0_disease', 'selectedtokentypes_0_disease2', 'selectedtokentypes_0_drug', 'selectedtokentypes_1_disease', 'selectedtokentypes_1_disease2', 'selectedtokentypes_1_drug' ] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected colmeans1 = np.sum(matrix1, axis=0) assert colmeans1.tolist() == [[2, 2, 4, 2, 2, 4]] colmeans2 = np.sum(matrix2, axis=0) assert colmeans2.tolist() == [[5, 4, 9, 5, 4, 9]]
def test_vectorizer_unigramsBetweenEntities(): corpus1, _ = generateTestData(positiveCount=5, negativeCount=5) corpus2, _ = generateTestData(positiveCount=10, negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) chosenFeatures = ["unigramsBetweenEntities"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures, tfidf=True) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) assert matrix1.shape == (8, 16) assert matrix2.shape == (18, 16) colnames = vectorizer.getFeatureNames() expectedNames = [ u'ngrams_betweenentities_a', u'ngrams_betweenentities_be', u'ngrams_betweenentities_can', u'ngrams_betweenentities_clinical', u'ngrams_betweenentities_common', u'ngrams_betweenentities_effect', u'ngrams_betweenentities_failed', u'ngrams_betweenentities_for', u'ngrams_betweenentities_is', u'ngrams_betweenentities_known', u'ngrams_betweenentities_of', u'ngrams_betweenentities_side', u'ngrams_betweenentities_treated', u'ngrams_betweenentities_treatment', u'ngrams_betweenentities_trials', u'ngrams_betweenentities_with' ] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [ 1.4519522547520485, 1.0, 1.0, 1.0581526716744893, 1.037330992404908, 0.8817459917627732, 1.0581526716744893, 1.5854195824122916, 1.4519522547520485, 0.8817459917627732, 0.8817459917627732, 0.8817459917627732, 1.0, 1.037330992404908, 1.0581526716744893, 1.0 ] colmeans1 = np.sum(matrix1, axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal, expectedVal in zip(colmeans1, expected1): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue) expected2 = [ 1.4519522547520485, 1.0, 1.0, 1.0581526716744893, 1.037330992404908, 0.8817459917627732, 1.0581526716744893, 1.5854195824122916, 1.4519522547520485, 0.8817459917627732, 0.8817459917627732, 0.8817459917627732, 1.0, 1.037330992404908, 1.0581526716744893, 1.0 ] colmeans2 = np.sum(matrix1, axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal, expectedVal in zip(colmeans2, expected2): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue)
def test_vectorizer_dependencyPathEdgesNearEntities_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) candidateBuilder = kindred.CandidateBuilder() candidateBuilder.fit_transform(corpus1) candidateBuilder.transform(corpus2) chosenFeatures = ["dependencyPathEdgesNearEntities"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures,tfidf=False) matrix1 = vectorizer.fit_transform(corpus1) matrix2 = vectorizer.transform(corpus2) assert matrix1.shape == (8,6) assert matrix2.shape == (18,6) colnames = vectorizer.getFeatureNames() expectedNames = [u'dependencypathnearselectedtoken_0_dobj', u'dependencypathnearselectedtoken_0_nsubj', u'dependencypathnearselectedtoken_0_nsubjpass', u'dependencypathnearselectedtoken_1_dobj', u'dependencypathnearselectedtoken_1_nsubj', u'dependencypathnearselectedtoken_1_nsubjpass'] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected colmeans1 = np.sum(matrix1,axis=0) assert colmeans1.tolist() == [[1.0, 2.0, 1.0, 1.0, 2.0, 1.0]] # As a quick check, we'll confirm that the column means are as expected colmeans2 = np.sum(matrix2,axis=0) assert colmeans2.tolist() == [[0.0, 5.0, 1.0, 0.0, 5.0, 1.0]]
def test_vectorizer_defaults(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) vectorizer = kindred.Vectorizer() matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) colnames = vectorizer.getFeatureNames() # As a quick check, we'll confirm that the column means are as expected colmeans1 = np.sum(matrix1,axis=0).tolist()[0] namedCols1 = { col:round(v,8) for col,v in zip(colnames,colmeans1) } check('test_vectorizer_defaults_1',namedCols1) colmeans2 = np.sum(matrix2,axis=0).tolist()[0] namedCols2 = { col:round(v,8) for col,v in zip(colnames,colmeans2) } check('test_vectorizer_defaults_2',namedCols2)
def test_vectorizer_dependencyPathEdgesNearEntities_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) chosenFeatures = ["dependencyPathEdgesNearEntities"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures,tfidf=False) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) colnames = vectorizer.getFeatureNames() # As a quick check, we'll confirm that the column means are as expected colmeans1 = np.sum(matrix1,axis=0).tolist()[0] namedCols1 = { col:round(v,8) for col,v in zip(colnames,colmeans1) } check('test_vectorizer_dependencyPathEdgesNearEntities_noTFIDF_1',namedCols1) colmeans2 = np.sum(matrix1,axis=0).tolist()[0] namedCols2 = { col:round(v,8) for col,v in zip(colnames,colmeans2) } check('test_vectorizer_dependencyPathEdgesNearEntities_noTFIDF_2',namedCols2)
def test_vectorizer_defaults(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) candidateBuilder = kindred.CandidateBuilder() candidateBuilder.fit_transform(corpus1) candidateBuilder.transform(corpus2) candidates = corpus1.getCandidateRelations() vectorizer = kindred.Vectorizer() matrix1 = vectorizer.fit_transform(corpus1) matrix2 = vectorizer.transform(corpus2) assert matrix1.shape == (8,61) assert matrix2.shape == (18,61) colnames = vectorizer.getFeatureNames() expectedNames = [u'selectedtokentypes_0_disease', u'selectedtokentypes_0_disease2', u'selectedtokentypes_0_drug', u'selectedtokentypes_1_disease', u'selectedtokentypes_1_disease2', u'selectedtokentypes_1_drug', u'ngrams_betweenentities_a', u'ngrams_betweenentities_be', u'ngrams_betweenentities_can', u'ngrams_betweenentities_clinical', u'ngrams_betweenentities_common', u'ngrams_betweenentities_effect', u'ngrams_betweenentities_failed', u'ngrams_betweenentities_for', u'ngrams_betweenentities_is', u'ngrams_betweenentities_known', u'ngrams_betweenentities_of', u'ngrams_betweenentities_side', u'ngrams_betweenentities_treated', u'ngrams_betweenentities_treatment', u'ngrams_betweenentities_trials', u'ngrams_betweenentities_with', u'bigrams_ _gnorcyvmer', u'bigrams_a_common', u'bigrams_a_known', u'bigrams_be_treated', u'bigrams_bmzvpvwbpw_failed', u'bigrams_can_be', u'bigrams_clinical_trials', u'bigrams_common_treatment', u'bigrams_effect_of', u'bigrams_failed_clinical', u'bigrams_for_kyekjnkrfo', u'bigrams_for_zgwivlcmly', u'bigrams_gnorcyvmer_is', u'bigrams_is_a', u'bigrams_known_side', u'bigrams_kyekjnkrfo_.', u'bigrams_of_ruswdgzajr', u'bigrams_ootopaoxbg_can', u'bigrams_pehhjnlvvewbjccovflf_is', u'bigrams_ruswdgzajr_.', u'bigrams_side_effect', u'bigrams_treated_with', u'bigrams_treatment_for', u'bigrams_trials_for', u'bigrams_vgypkemhjr_.', u'bigrams_with_vgypkemhjr', u'bigrams_zgwivlcmly_.', u'dependencypathelements_attr', u'dependencypathelements_dobj', u'dependencypathelements_nsubj', u'dependencypathelements_nsubjpass', u'dependencypathelements_pobj', u'dependencypathelements_prep', u'dependencypathnearselectedtoken_0_dobj', u'dependencypathnearselectedtoken_0_nsubj', u'dependencypathnearselectedtoken_0_nsubjpass', u'dependencypathnearselectedtoken_1_dobj', u'dependencypathnearselectedtoken_1_nsubj', u'dependencypathnearselectedtoken_1_nsubjpass'] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [2.0, 2.0, 4.0, 2.0, 2.0, 4.0, 1.4519522547520485, 1.0, 1.0, 1.0581526716744893, 1.037330992404908, 0.8817459917627732, 1.0581526716744893, 1.5854195824122916, 1.4519522547520485, 0.8817459917627732, 0.8817459917627732, 0.8817459917627732, 1.0, 1.037330992404908, 1.0581526716744893, 1.0, 0.6830902801437798, 0.7801302536256829, 0.6830902801437798, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 1.1070563456981333, 0.6830902801437798, 0.8164965809277259, 0.6830902801437798, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 0.6830902801437798, 0.8164965809277259, 0.7801302536256829, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829, 4.0, 2.0, 4.0, 2.0, 8.0, 8.0, 1.0, 2.0, 1.0, 1.0, 2.0, 1.0] colmeans1 = np.sum(matrix1,axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal,expectedVal in zip(colmeans1,expected1): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue) # As a quick check, we'll confirm that the column means are as expected expected2 = [5.0, 4.0, 9.0, 5.0, 4.0, 9.0, 0.7848330659854781, 1.0, 1.0, 2.1163053433489787, 1.037330992404908, 0.0, 2.1163053433489787, 2.386006098839105, 1.99154811934689, 0.0, 1.594941622753311, 0.0, 1.0, 1.037330992404908, 2.1163053433489787, 1.0, 0.0, 1.0581526716744893, 0.0, 0.8164965809277259, 1.0, 0.8164965809277259, 2.1547005383792515, 1.0581526716744893, 0.0, 2.1547005383792515, 0.0, 0.0, 0.0, 0.8005865164268136, 0.0, 2.0, 0.0, 0.8164965809277259, 2.0, 0.0, 0.0, 0.8164965809277259, 1.0581526716744893, 2.1547005383792515, 0.8164965809277259, 0.8164965809277259, 0.0, 4.0, 4.0, 16.0, 2.0, 10.0, 10.0, 0.0, 5.0, 1.0, 0.0, 5.0, 1.0] colmeans2 = np.sum(matrix2,axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal,expectedVal in zip(colmeans2,expected2): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue)
def test_vectorizer_bigrams_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) candidateBuilder = kindred.CandidateBuilder() candidateBuilder.fit_transform(corpus1) candidateBuilder.transform(corpus2) chosenFeatures = ["bigrams"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures,tfidf=False) matrix1 = vectorizer.fit_transform(corpus1) matrix2 = vectorizer.transform(corpus2) assert matrix1.shape == (8,27) assert matrix2.shape == (18,27) colnames = vectorizer.getFeatureNames() expectedNames = [u'bigrams_ _gnorcyvmer', u'bigrams_a_common', u'bigrams_a_known', u'bigrams_be_treated', u'bigrams_bmzvpvwbpw_failed', u'bigrams_can_be', u'bigrams_clinical_trials', u'bigrams_common_treatment', u'bigrams_effect_of', u'bigrams_failed_clinical', u'bigrams_for_kyekjnkrfo', u'bigrams_for_zgwivlcmly', u'bigrams_gnorcyvmer_is', u'bigrams_is_a', u'bigrams_known_side', u'bigrams_kyekjnkrfo_.', u'bigrams_of_ruswdgzajr', u'bigrams_ootopaoxbg_can', u'bigrams_pehhjnlvvewbjccovflf_is', u'bigrams_ruswdgzajr_.', u'bigrams_side_effect', u'bigrams_treated_with', u'bigrams_treatment_for', u'bigrams_trials_for', u'bigrams_vgypkemhjr_.', u'bigrams_with_vgypkemhjr', u'bigrams_zgwivlcmly_.'] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 8.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0, 4.0] colmeans1 = np.sum(matrix1,axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal,expectedVal in zip(colmeans1,expected1): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue) # As a quick check, we'll confirm that the column means are as expected expected2 = [0.0, 4.0, 0.0, 4.0, 4.0, 4.0, 8.0, 4.0, 0.0, 8.0, 0.0, 0.0, 0.0, 4.0, 0.0, 4.0, 0.0, 4.0, 4.0, 0.0, 0.0, 4.0, 4.0, 8.0, 4.0, 4.0, 0.0] colmeans2 = np.sum(matrix2,axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal,expectedVal in zip(colmeans2,expected2): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue)
def test_vectorizer_unigramsBetweenEntities_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5,negativeCount=5) corpus2, _ = generateTestData(positiveCount=10,negativeCount=10) candidateBuilder = kindred.CandidateBuilder() candidateBuilder.fit_transform(corpus1) candidateBuilder.transform(corpus2) chosenFeatures = ["unigramsBetweenEntities"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures,tfidf=False) matrix1 = vectorizer.fit_transform(corpus1) matrix2 = vectorizer.transform(corpus2) assert matrix1.shape == (8,16) assert matrix2.shape == (18,16) colnames = vectorizer.getFeatureNames() expectedNames = [u'ngrams_betweenentities_a', u'ngrams_betweenentities_be', u'ngrams_betweenentities_can', u'ngrams_betweenentities_clinical', u'ngrams_betweenentities_common', u'ngrams_betweenentities_effect', u'ngrams_betweenentities_failed', u'ngrams_betweenentities_for', u'ngrams_betweenentities_is', u'ngrams_betweenentities_known', u'ngrams_betweenentities_of', u'ngrams_betweenentities_side', u'ngrams_betweenentities_treated', u'ngrams_betweenentities_treatment', u'ngrams_betweenentities_trials', u'ngrams_betweenentities_with'] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [4.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0, 4.0, 4.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0] colmeans1 = np.sum(matrix1,axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal,expectedVal in zip(colmeans1,expected1): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue) expected2 = [4.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0, 4.0, 4.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0, 2.0] colmeans2 = np.sum(matrix1,axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal,expectedVal in zip(colmeans2,expected2): assert round(gotVal,8) == round(expectedVal,8) # Check rounded values (for floating point comparison issue)
def test_simpleVectorizer_triple(): text = '<drug id="1">Erlotinib</drug> is a common treatment for <cancer id="2">NSCLC</cancer> which targets <gene id="3">EGFR</gene>. <relation type="druginfo" drug="1" disease="2" gene="3" />' corpus = kindred.Corpus(text,loadFromSimpleTag=True) parser = kindred.Parser() parser.parse(corpus) candidateBuilder = kindred.CandidateBuilder(entityCount=3) candidateRelations = candidateBuilder.build(corpus) # We'll just get the vectors for the entityTypes vectorizer = kindred.Vectorizer(entityCount=3,featureChoice=["entityTypes"]) vectors = vectorizer.fit_transform(candidateRelations) vectorsCSR = vectors.tocsr() rows,cols = vectors.nonzero() expected = {(0, 1): 1.0, (0, 3): 1.0, (0, 8): 1.0, (1, 1): 1.0, (1, 5): 1.0, (1, 6): 1.0, (2, 0): 1.0, (2, 4): 1.0, (2, 8): 1.0, (3, 0): 1.0, (3, 5): 1.0, (3, 7): 1.0, (4, 2): 1.0, (4, 4): 1.0, (4, 6): 1.0, (5, 2): 1.0, (5, 3): 1.0, (5, 7): 1.0} namedCols = { str((r,c)):vectorsCSR[r,c] for r,c in zip(rows.tolist(),cols.tolist()) } check('test_simpleVectorizer_triple',namedCols)
def test_simpleVectorizer_binary(): text = '<drug id="1">Erlotinib</drug> is a common treatment for <cancer id="2">NSCLC</cancer>. <drug id="3">Aspirin</drug> is the main cause of <disease id="4">boneitis</disease> . <relation type="treats" subj="1" obj="2" />' corpus = kindred.Corpus(text,loadFromSimpleTag=True) parser = kindred.Parser() parser.parse(corpus) candidateBuilder = kindred.CandidateBuilder() candidateRelations = candidateBuilder.build(corpus) # We'll just get the vectors for the entityTypes vectorizer = kindred.Vectorizer(featureChoice=["entityTypes"]) vectors = vectorizer.fit_transform(candidateRelations) vectorsCSR = vectors.tocsr() rows,cols = vectors.nonzero() expected = {(0, 2): 1.0, (0, 3): 1.0, (1, 0): 1.0, (1, 5): 1.0, (2, 2): 1.0, (2, 4): 1.0, (3, 1): 1.0, (3, 5): 1.0} namedCols = { str((r,c)):vectorsCSR[r,c] for r,c in zip(rows.tolist(),cols.tolist()) } check('test_simpleVectorizer_binary',namedCols)
def test_vectorizer_dependencyPathEdges_noTFIDF(): corpus1, _ = generateTestData(positiveCount=5, negativeCount=5) corpus2, _ = generateTestData(positiveCount=10, negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) chosenFeatures = ["dependencyPathEdges"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures, tfidf=False) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) assert matrix1.shape == (8, 5) assert matrix2.shape == (18, 5) colnames = vectorizer.getFeatureNames() expectedNames = [ 'dependencypathelements_attr', 'dependencypathelements_nsubj', 'dependencypathelements_nsubjpass', 'dependencypathelements_pobj', 'dependencypathelements_prep' ] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected colmeans1 = np.sum(matrix1, axis=0) assert colmeans1.tolist() == [[4.0, 4.0, 2.0, 10.0, 8.0]] # As a quick check, we'll confirm that the column means are as expected colmeans2 = np.sum(matrix2, axis=0) assert colmeans2.tolist() == [[4.0, 10.0, 2.0, 10.0, 10.0]]
def test_vectorizer_defaults_triple(): corpus1, _ = generateTestData(entityCount=3, positiveCount=5, negativeCount=5) corpus2, _ = generateTestData(entityCount=3, positiveCount=10, negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder(entityCount=3) candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) vectorizer = kindred.Vectorizer(entityCount=3) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) assert matrix1.shape == (18, 101) assert matrix2.shape == (60, 101) colnames = vectorizer.getFeatureNames() expectedNames = [ 'selectedtokentypes_0_disease', 'selectedtokentypes_0_drug', 'selectedtokentypes_0_gene', 'selectedtokentypes_1_disease', 'selectedtokentypes_1_drug', 'selectedtokentypes_1_gene', 'selectedtokentypes_2_disease', 'selectedtokentypes_2_drug', 'selectedtokentypes_2_gene', 'ngrams_betweenentities_0_1_and', 'ngrams_betweenentities_0_1_be', 'ngrams_betweenentities_0_1_by', 'ngrams_betweenentities_0_1_can', 'ngrams_betweenentities_0_1_fvdxdietdx', 'ngrams_betweenentities_0_1_inhibition', 'ngrams_betweenentities_0_1_knetvjnjun', 'ngrams_betweenentities_0_1_targets', 'ngrams_betweenentities_0_1_treated', 'ngrams_betweenentities_0_1_treats', 'ngrams_betweenentities_0_1_using', 'ngrams_betweenentities_0_1_zkrkzlyfef', 'ngrams_betweenentities_0_2_and', 'ngrams_betweenentities_0_2_be', 'ngrams_betweenentities_0_2_by', 'ngrams_betweenentities_0_2_can', 'ngrams_betweenentities_0_2_fvdxdietdx', 'ngrams_betweenentities_0_2_inhibition', 'ngrams_betweenentities_0_2_knetvjnjun', 'ngrams_betweenentities_0_2_targets', 'ngrams_betweenentities_0_2_treated', 'ngrams_betweenentities_0_2_treats', 'ngrams_betweenentities_0_2_using', 'ngrams_betweenentities_0_2_zkrkzlyfef', 'ngrams_betweenentities_1_2_and', 'ngrams_betweenentities_1_2_be', 'ngrams_betweenentities_1_2_by', 'ngrams_betweenentities_1_2_can', 'ngrams_betweenentities_1_2_fvdxdietdx', 'ngrams_betweenentities_1_2_inhibition', 'ngrams_betweenentities_1_2_knetvjnjun', 'ngrams_betweenentities_1_2_targets', 'ngrams_betweenentities_1_2_treated', 'ngrams_betweenentities_1_2_treats', 'ngrams_betweenentities_1_2_using', 'ngrams_betweenentities_1_2_zkrkzlyfef', 'bigrams_and_targets', 'bigrams_be_treated', 'bigrams_by_fvdxdietdx', 'bigrams_by_zkrkzlyfef', 'bigrams_can_be', 'bigrams_elvptnpvyc_.', 'bigrams_fvdxdietdx_inhibition', 'bigrams_hxlfssirgk_.', 'bigrams_inhibition_using', 'bigrams_knetvjnjun_and', 'bigrams_kyekjnkrfo_can', 'bigrams_oxzbaapqct_treats', 'bigrams_targets_hxlfssirgk', 'bigrams_treated_by', 'bigrams_treats_knetvjnjun', 'bigrams_usckfljzxu_.', 'bigrams_using_elvptnpvyc', 'bigrams_using_usckfljzxu', 'bigrams_zgwivlcmly_can', 'bigrams_zkrkzlyfef_inhibition', 'dependencypathelements_0_1_acl', 'dependencypathelements_0_1_advmod', 'dependencypathelements_0_1_agent', 'dependencypathelements_0_1_compound', 'dependencypathelements_0_1_conj', 'dependencypathelements_0_1_dobj', 'dependencypathelements_0_1_nsubjpass', 'dependencypathelements_0_1_pobj', 'dependencypathelements_0_2_acl', 'dependencypathelements_0_2_advmod', 'dependencypathelements_0_2_agent', 'dependencypathelements_0_2_compound', 'dependencypathelements_0_2_conj', 'dependencypathelements_0_2_dobj', 'dependencypathelements_0_2_nsubjpass', 'dependencypathelements_0_2_pobj', 'dependencypathelements_1_2_acl', 'dependencypathelements_1_2_advmod', 'dependencypathelements_1_2_agent', 'dependencypathelements_1_2_compound', 'dependencypathelements_1_2_conj', 'dependencypathelements_1_2_dobj', 'dependencypathelements_1_2_nsubjpass', 'dependencypathelements_1_2_pobj', 'dependencypathnearselectedtoken_0_compound', 'dependencypathnearselectedtoken_0_conj', 'dependencypathnearselectedtoken_0_dobj', 'dependencypathnearselectedtoken_0_nsubjpass', 'dependencypathnearselectedtoken_1_compound', 'dependencypathnearselectedtoken_1_conj', 'dependencypathnearselectedtoken_1_dobj', 'dependencypathnearselectedtoken_1_nsubjpass', 'dependencypathnearselectedtoken_2_compound', 'dependencypathnearselectedtoken_2_conj', 'dependencypathnearselectedtoken_2_dobj', 'dependencypathnearselectedtoken_2_nsubjpass' ] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [ 6.0, 6.0, 6.0, 6.0, 6.0, 6.0, 6.0, 6.0, 6.0, 1.4620174403662662, 2.089911361057128, 2.089911361057128, 2.089911361057128, 0.8510011029330441, 2.089911361057128, 0.8909306965737043, 1.4620174403662662, 2.089911361057128, 1.4620174403662662, 2.089911361057128, 0.8510011029330441, 1.4620174403662662, 2.089911361057128, 2.089911361057128, 2.089911361057128, 0.8510011029330442, 2.089911361057128, 0.8909306965737043, 1.4620174403662662, 2.089911361057128, 1.4620174403662662, 2.089911361057128, 0.8510011029330441, 1.4620174403662662, 2.089911361057128, 2.089911361057128, 2.089911361057128, 0.8510011029330442, 2.089911361057128, 0.8909306965737043, 1.4620174403662662, 2.089911361057128, 1.4620174403662662, 2.089911361057128, 0.8510011029330441, 2.4494897427831783, 3.151972689633972, 2.283202494909358, 2.283202494909358, 3.151972689633972, 2.283202494909358, 2.283202494909358, 2.4494897427831783, 3.151972689633972, 2.4494897427831783, 2.283202494909358, 2.4494897427831783, 2.4494897427831783, 3.151972689633972, 2.4494897427831783, 2.283202494909358, 2.283202494909358, 2.283202494909358, 2.283202494909358, 2.283202494909358, 8.0, 4.0, 8.0, 8.0, 4.0, 12.0, 8.0, 8.0, 8.0, 4.0, 8.0, 8.0, 4.0, 12.0, 8.0, 8.0, 8.0, 4.0, 8.0, 8.0, 4.0, 12.0, 8.0, 8.0, 4.0, 2.0, 2.0, 4.0, 4.0, 2.0, 2.0, 4.0, 4.0, 2.0, 2.0, 4.0 ] colmeans1 = np.sum(matrix1, axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal, expectedVal in zip(colmeans1, expected1): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue) # As a quick check, we'll confirm that the column means are as expected expected2 = [ 8.0, 20.0, 20.0, 8.0, 20.0, 20.0, 8.0, 20.0, 20.0, 5.237574707711817, 0.0, 0.0, 0.0, 3.9169357592886755, 0.0, 0.8909306965737043, 18.69384731218667, 0.0, 3.095010602221718, 0.0, 0.0, 5.237574707711817, 0.0, 0.0, 0.0, 3.9169357592886755, 0.0, 0.8909306965737043, 18.69384731218667, 0.0, 3.095010602221718, 0.0, 0.0, 5.237574707711817, 0.0, 0.0, 0.0, 3.9169357592886755, 0.0, 0.8909306965737043, 18.69384731218667, 0.0, 3.095010602221718, 0.0, 0.0, 8.449489742783179, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 2.4494897427831783, 0.0, 2.4494897427831783, 0.0, 2.4494897427831783, 2.4494897427831783, 0.0, 2.4494897427831783, 0.0, 0.0, 0.0, 0.0, 0.0, 0.0, 4.0, 0.0, 12.0, 20.0, 28.0, 8.0, 28.0, 0.0, 4.0, 0.0, 12.0, 20.0, 28.0, 8.0, 28.0, 0.0, 4.0, 0.0, 12.0, 20.0, 28.0, 8.0, 28.0, 4.0, 10.0, 2.0, 4.0, 4.0, 10.0, 2.0, 4.0, 4.0, 10.0, 2.0, 4.0 ] colmeans2 = np.sum(matrix2, axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal, expectedVal in zip(colmeans2, expected2): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue)
def test_vectorizer_bigrams(): corpus1, _ = generateTestData(positiveCount=5, negativeCount=5) corpus2, _ = generateTestData(positiveCount=10, negativeCount=10) parser = kindred.Parser() parser.parse(corpus1) parser.parse(corpus2) candidateBuilder = kindred.CandidateBuilder() candidateRelations1 = candidateBuilder.build(corpus1) candidateRelations2 = candidateBuilder.build(corpus2) chosenFeatures = ["bigrams"] vectorizer = kindred.Vectorizer(featureChoice=chosenFeatures, tfidf=True) matrix1 = vectorizer.fit_transform(candidateRelations1) matrix2 = vectorizer.transform(candidateRelations2) assert matrix1.shape == (8, 27) assert matrix2.shape == (18, 27) colnames = vectorizer.getFeatureNames() expectedNames = [ u'bigrams_ _gnorcyvmer', u'bigrams_a_common', u'bigrams_a_known', u'bigrams_be_treated', u'bigrams_bmzvpvwbpw_failed', u'bigrams_can_be', u'bigrams_clinical_trials', u'bigrams_common_treatment', u'bigrams_effect_of', u'bigrams_failed_clinical', u'bigrams_for_kyekjnkrfo', u'bigrams_for_zgwivlcmly', u'bigrams_gnorcyvmer_is', u'bigrams_is_a', u'bigrams_known_side', u'bigrams_kyekjnkrfo_.', u'bigrams_of_ruswdgzajr', u'bigrams_ootopaoxbg_can', u'bigrams_pehhjnlvvewbjccovflf_is', u'bigrams_ruswdgzajr_.', u'bigrams_side_effect', u'bigrams_treated_with', u'bigrams_treatment_for', u'bigrams_trials_for', u'bigrams_vgypkemhjr_.', u'bigrams_with_vgypkemhjr', u'bigrams_zgwivlcmly_.' ] assert colnames == expectedNames # As a quick check, we'll confirm that the column means are as expected expected1 = [ 0.6830902801437798, 0.7801302536256829, 0.6830902801437798, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 1.1070563456981333, 0.6830902801437798, 0.8164965809277259, 0.6830902801437798, 0.8164965809277259, 0.7801302536256829, 0.6830902801437798, 0.6830902801437798, 0.8164965809277259, 0.7801302536256829, 0.8164965809277259, 0.8164965809277259, 0.8164965809277259, 0.7801302536256829 ] colmeans1 = np.sum(matrix1, axis=0).tolist()[0] assert len(expected1) == len(colmeans1) for gotVal, expectedVal in zip(colmeans1, expected1): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue) # As a quick check, we'll confirm that the column means are as expected expected2 = [ 0.0, 1.0581526716744893, 0.0, 0.8164965809277259, 1.0, 0.8164965809277259, 2.1547005383792515, 1.0581526716744893, 0.0, 2.1547005383792515, 0.0, 0.0, 0.0, 0.8005865164268136, 0.0, 2.0, 0.0, 0.8164965809277259, 2.0, 0.0, 0.0, 0.8164965809277259, 1.0581526716744893, 2.1547005383792515, 0.8164965809277259, 0.8164965809277259, 0.0 ] colmeans2 = np.sum(matrix2, axis=0).tolist()[0] assert len(expected2) == len(colmeans2) for gotVal, expectedVal in zip(colmeans2, expected2): assert round(gotVal, 8) == round( expectedVal, 8) # Check rounded values (for floating point comparison issue)
entityIDToTokenLocs = { entity.entityID:tokenIndices for entity,tokenIndices in cr.sentence.entityAnnotations } keyword,geneOrProtein = [ entityIDToEntity[entityID] for entityID in cr.entityIDs ] keywordLoc,geneOrProteinLoc = [ entityIDToTokenLocs[entityID] for entityID in cr.entityIDs ] docs = list(set([ entityIDToDoc[entityID] for entityID in cr.entityIDs ])) assert len(docs) == 1 doc = docs[0] if len(geneOrProtein.text) < 3: continue #print('keywordLoc',keywordLoc) #print('geneOrProteinLoc',geneOrProteinLoc) distBetweenEntities = min( abs(min(keywordLoc)-max(geneOrProteinLoc)), abs(min(geneOrProteinLoc)-max(keywordLoc)) ) #print('distBetweenEntities',distBetweenEntities) #assert False if distBetweenEntities > 10: continue candidateRelations.append(cr) metadata.append(doc.metadata) print("%s : candidate filtering (%d)" % (now(),len(candidateRelations))) vectorizer = kindred.Vectorizer(entityCount=2) vectors = vectorizer.fit_transform(candidateRelations) print("%s : vectorizer" % now()) with open(args.outRelationsVectorsAndMetadata,'wb') as outF: pickle.dump((candidateRelations,vectors,metadata),outF) print("%s : saved" % now())