Ejemplo n.º 1
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def test_sk_OrthogonalMatchingPursuitCV():
    print("Testing sklearn, OrthogonalMatchingPursuitCV...")
    mod = linear_model.OrthogonalMatchingPursuitCV()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "OrthogonalMatchingPursuitCV test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 2
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def test_sk_PassiveAggressiveRegressor():
    print("Testing sklearn, PassiveAggressiveRegressor...")
    mod = linear_model.PassiveAggressiveRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "PassiveAggressiveRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 3
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def test_sk_LinearSVC():
    print("Testing sklearn, LinearSVC...")
    mod = svm.LinearSVC(max_iter=10000)  # Needs more iterations to converge
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "LinearSVC test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 4
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def test_sk_NuSVR():
    print("Testing sklearn, NuSVR...")
    mod = svm.NuSVR()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "NuSVR test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 5
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def test_sk_LassoLarsIC():
    print("Testing sklearn, LassoLarsIC...")
    mod = linear_model.LassoLarsIC()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "LassoLarsIC test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 6
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def test_sk_LinearRegression():
    print("Testing sklearn, LinearRegression...")
    mod = linear_model.LinearRegression()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "LinearRegression test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 7
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def test_sk_ExtraTreesRegressor():
    print("Testing sklearn, Ensemble ExtraTreeRegressor...")
    mod = ensemble.ExtraTreesRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "ExtraTreeRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 8
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def test_sk_ExtraTreeClassifier():
    print("Testing sklearn, ExtraTreeClassifier...")
    mod = tree.ExtraTreeClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "ExtraTreeClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 9
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def test_sk_ElasticNetCV():
    print("Testing sklearn, ElasticNetCV...")
    mod = linear_model.ElasticNetCV()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "ElasticNetCV test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 10
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def test_sk_Perceptron():
    print("Testing sklearn, Perceptron...")
    mod = linear_model.Perceptron()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "Perceptron test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 11
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def test_sk_RidgeClassifier():
    print("Testing sklearn, RidgeClassifier...")
    mod = linear_model.RidgeClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "RidgeClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 12
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def test_sm_QuantReg():
    print("Testing SM, QuantReg...")
    X, y = iris_data
    est = sm.QuantReg(y, X)
    mod = est.fit()
    docs = {'name': "QuantReg test"}
    fv = X[0, :]
    upload(mod, fv, docs=docs)
Ejemplo n.º 13
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def test_lgb_SAGARegressor():
    print("Testing lightgbm, SAGARegressor...")
    mod = lgb.SAGARegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "SAGARegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 14
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def test_lgb_FistaRegressor():
    print("Testing lightning, FistaRegressor...")
    mod = lgb.FistaRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "FistaRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 15
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def test_lgb_KernelSVC():
    print("Testing lightning, KernelSVC...")
    mod = ln.KernelSVC()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "KernelSVC test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 16
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def test_lgb_CDClassifier():
    print("Testing lightning, CDClassifier...")
    mod = lgb.CDClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "CDClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 17
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def test_sm_OLS():
    print("Testing SM, OLS...")
    X, y = iris_data
    est = sm.OLS(y, X)
    mod = est.fit()
    docs = {'name': "OLS test"}
    fv = X[0, :]
    upload(mod, fv, docs=docs)
Ejemplo n.º 18
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def test_sk_RandomForestRegressor():
    print("Testing sklearn, RandomForestRegressor...")
    mod = ensemble.RandomForestRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "RandomForestRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 19
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def test_lgb_LGBMClassifier():
    print("Testing lightgbm, LGBMClassifier...")
    mod = lgb.LGBMClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "LGBMClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 20
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def test_sk_TheilSenRegressor():
    mod = linear_model.TheilSenRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "TheilSenRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
    print("Tested sklearn, TheilSenRegressor...")
Ejemplo n.º 21
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def test_sm_GLSAR():
    print("Testing SM, GLSAR...")
    X, y = iris_data
    est = sm.GLS(y, X, rho=2)
    mod = est.fit()
    docs = {'name': "GLSAR test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 22
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def test_sk_SGDClassifier():
    mod = linear_model.SGDClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "SGDClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
    print("Tested sklearn, SGDClassifier...")
Ejemplo n.º 23
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def test_sk_SVR():
    mod = svm.SVR()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "SVR test"}
    fv = X[0, :]
    upload(mod, fv, docs)
    print("Tested sklearn, SVR...")
Ejemplo n.º 24
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def test_sk_RidgeCV():
    mod = linear_model.RidgeCV()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "RidgeCV test"}
    fv = X[0, :]
    upload(mod, fv, docs)
    print("Tested sklearn, RidgeCV...")
Ejemplo n.º 25
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def test_sk_DecisionTreeRegressor():
    print("Testing sklearn, DecisionTreeRegressor...")
    mod = tree.DecisionTreeRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "DecisionTreeClassifier test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 26
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def test_sk_RANSACRegressor():
    print("Testing sklearn, RANSACRegressor...")
    mod = linear_model.RANSACRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "RANSACRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 27
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def test_lgb_SDCARegressor():
    print("Testing lightning, SDCARegressor...")
    mod = lgb.SDCAClassifier()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "SDCARegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 28
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def test_xg_XGBRFRegressor():
    print("Testing xgboost, XGBRFRegressor...")
    mod = XGBRFRegressor()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "XGBRFRegressor test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 29
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def test_sk_BayesianRidge():
    print("Testing sklearn, BayesianRidge...")
    mod = linear_model.BayesianRidge()
    X, y = iris_data
    mod.fit(X, y)
    docs = {'name': "BayesianRidge test"}
    fv = X[0, :]
    upload(mod, fv, docs)
Ejemplo n.º 30
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def test_sm_GLS():
    print("Testing SM, GLS...")
    data = sm.datasets.longley.load(as_pandas=False)
    X = sm.add_constant(data.exog)
    est = sm.GLS(data.endog, X, sigma=1)
    mod = est.fit()
    docs = {'name': "GLS test"}
    fv = X[0, :]
    upload(mod, fv, docs)