Esempio n. 1
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def weka_local_generic_learner(input_dict):
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()
    model = jp.JClass(input_dict['weka_class'])()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Generic_Weka_learner': sclassifier}
Esempio n. 2
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def weka_local_libsvm(input_dict):
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()
    model = jp.JClass('weka.classifiers.functions.LibSVM')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'LibSVM_learner': sclassifier}
Esempio n. 3
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def weka_local_generic_learner(input_dict):
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()
    model = jp.JClass(input_dict['weka_class'])()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Generic_Weka_learner': sclassifier}
Esempio n. 4
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def weka_local_libsvm(input_dict):
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()
    model = jp.JClass('weka.classifiers.functions.LibSVM')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'LibSVM_learner': sclassifier}
Esempio n. 5
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def weka_local_smo(input_dict):
    '''A support vector classifier, trained using the Sequential Minimal Optimization (SMO) algorithm
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.SMO')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'SMO_learner': sclassifier}
Esempio n. 6
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def weka_local_random_forest(input_dict):
    '''Random Forest learner by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomForest')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'RandomForest_learner': sclassifier}
Esempio n. 7
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def weka_local_random_forest(input_dict):
    '''Random Forest learner by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomForest')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'RandomForest_learner': sclassifier}
Esempio n. 8
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def weka_local_rep_tree(input_dict):
    '''A REP Tree, which is a fast decision tree learner. Builds a decision/regression tree using information gain/variance and prunes it using reduced-error pruning
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.REPTree')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'REPTree_learner': sclassifier}
Esempio n. 9
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def weka_local_k_star(input_dict):
    '''Instance-Based learner K* by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.KStar')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'KStar_learner': sclassifier}
Esempio n. 10
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def weka_local_naive_bayes(input_dict):
    '''Naive Bayes classifier provided by Weka. Naive Bayes is a simple probabilistic classifier based on applying the Bayes' theorem.
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.bayes.NaiveBayes')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Naive_Bayes_learner': sclassifier}
Esempio n. 11
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def weka_local_zeror(input_dict):
    '''Weka's rulesZeroR classifier: predicts the mean (for a numeric class) or the mode (for a nominal class).
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.ZeroR')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'classifier': sclassifier}
Esempio n. 12
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def weka_local_jrip(input_dict):
    '''The RIPPER rule learner by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.JRip')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'JRip_learner': sclassifier}
Esempio n. 13
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def weka_local_multilayer_perceptron(input_dict):
    '''Feedforward artificial neural network, using backpropagation to classify instances
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.MultilayerPerceptron')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Multilayer_Perceptron_learner': sclassifier}
Esempio n. 14
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def weka_local_multilayer_perceptron(input_dict):
    '''Feedforward artificial neural network, using backpropagation to classify instances
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.MultilayerPerceptron')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Multilayer_Perceptron_learner': sclassifier}
Esempio n. 15
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def weka_local_smo(input_dict):
    '''A support vector classifier, trained using the Sequential Minimal Optimization (SMO) algorithm
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.SMO')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'SMO_learner': sclassifier}
Esempio n. 16
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def weka_local_rep_tree(input_dict):
    '''A REP Tree, which is a fast decision tree learner. Builds a decision/regression tree using information gain/variance and prunes it using reduced-error pruning
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.REPTree')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'REPTree_learner': sclassifier}
Esempio n. 17
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def weka_local_naive_bayes(input_dict):
    '''Naive Bayes classifier provided by Weka. Naive Bayes is a simple probabilistic classifier based on applying the Bayes' theorem.
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.bayes.NaiveBayes')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'Naive_Bayes_learner': sclassifier}
Esempio n. 18
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def weka_local_k_star(input_dict):
    '''Instance-Based learner K* by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.KStar')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'KStar_learner': sclassifier}
Esempio n. 19
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def weka_local_zeror(input_dict):
    '''Weka's rulesZeroR classifier: predicts the mean (for a numeric class) or the mode (for a nominal class).
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.ZeroR')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'classifier': sclassifier}
Esempio n. 20
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def weka_local_jrip(input_dict):
    '''The RIPPER rule learner by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.JRip')()
    model.setOptions(common.parse_options(input_dict['params']))
    sclassifier = common.serialize_weka_object(model)
    return {'JRip_learner': sclassifier}
Esempio n. 21
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def weka_local_random_tree(input_dict):
    '''A tree that considers K randomly chosen attributes at each node, and performs no pruning
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomTree')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'RandomTree_learner': sclassifier}
Esempio n. 22
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def weka_local_j48(input_dict):
    '''Weka decision tree learner J48
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.J48')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'J48_learner': sclassifier}
Esempio n. 23
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def weka_local_j48(input_dict):
    '''Weka decision tree learner J48
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.J48')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'J48_learner': sclassifier}
Esempio n. 24
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def weka_local_random_tree(input_dict):
    '''A tree that considers K randomly chosen attributes at each node, and performs no pruning
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomTree')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'RandomTree_learner': sclassifier}
Esempio n. 25
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def weka_local_ibk(input_dict):
    '''K-nearest neighbours classifier by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.IBk')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'IBk_learner': sclassifier}
Esempio n. 26
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def weka_local_ibk(input_dict):
    '''K-nearest neighbours classifier by Weka
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.IBk')()
    model.setOptions(common.parse_options(input_dict['params']))

    sclassifier = common.serialize_weka_object(model)
    return {'IBk_learner': sclassifier}
Esempio n. 27
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def random_tree(params=None):
    '''A tree that considers K randomly chosen attributes at each node, and performs no pruning

    :param params: parameters in textual form to pass to the RandomTree Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomTree')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 28
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def multilayer_perceptron(params=None):
    '''Feedforward artificial neural network, using backpropagation to classify instances

    :param params: parameters in textual form to pass to the MultilayerPerceptron Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.MultilayerPerceptron')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 29
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def rep_tree(params=None):
    '''A REP Tree, which is a fast decision tree learner. Builds a decision/regression tree using information gain/variance and prunes it using reduced-error pruning

    :param params: parameters in textual form to pass to the REPTree Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.REPTree')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 30
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def rep_tree(params=None):
    '''A REP Tree, which is a fast decision tree learner. Builds a decision/regression tree using information gain/variance and prunes it using reduced-error pruning

    :param params: parameters in textual form to pass to the REPTree Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.REPTree')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 31
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def naive_bayes(params=None):
    '''Naive Bayes classifier provided by Weka. Naive Bayes is a simple probabilistic classifier based on applying the Bayes' theorem.

    :param params: parameters in textual form to pass to the NaiveBayes Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.bayes.NaiveBayes')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 32
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def smo(params=None):
    '''A support vector classifier, trained using the Sequential Minimal Optimization (SMO) algorithm

    :param params: parameters in textual form to pass to the SMO Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.SMO')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 33
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def random_forest(params=None):
    '''Random Forest learner by Weka

    :param params: parameters in textual form to pass to the RandomForest Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomForest')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 34
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def k_star(params=None):
    '''Instance-Based learner K* by Weka

    :param params: parameters in textual form to pass to the KStar Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.KStar')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 35
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def k_star(params=None):
    '''Instance-Based learner K* by Weka

    :param params: parameters in textual form to pass to the KStar Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.KStar')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 36
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def rules_zeror(params=None):
    '''Weka's rulesZeroR classifier: predicts the mean (for a numeric class) or the mode (for a nominal class).

    :param params: parameters in textual form to pass to the rulesZeroR Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.ZeroR')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 37
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def naive_bayes(params=None):
    '''Naive Bayes classifier provided by Weka. Naive Bayes is a simple probabilistic classifier based on applying the Bayes' theorem.

    :param params: parameters in textual form to pass to the NaiveBayes Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.bayes.NaiveBayes')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 38
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def rules_jrip(params=None):
    '''The RIPPER rule learner by Weka

    :param params: parameters in textual form to pass to the JRip Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.JRip')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 39
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def ibk(params=None):
    '''K-nearest neighbours classifier by Weka

    :param params: parameters in textual form to pass to the IBk Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.IBk')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 40
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def logistic(params=None):
    '''Logistic regression by Weka

    :param params: parameters in textual form to pass to the Logistic Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.Logistic')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 41
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def multilayer_perceptron(params=None):
    '''Feedforward artificial neural network, using backpropagation to classify instances

    :param params: parameters in textual form to pass to the MultilayerPerceptron Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.MultilayerPerceptron')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 42
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def random_forest(params=None):
    '''Random Forest learner by Weka

    :param params: parameters in textual form to pass to the RandomForest Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomForest')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 43
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def random_tree(params=None):
    '''A tree that considers K randomly chosen attributes at each node, and performs no pruning

    :param params: parameters in textual form to pass to the RandomTree Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.RandomTree')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 44
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def rules_zeror(params=None):
    '''Weka's rulesZeroR classifier: predicts the mean (for a numeric class) or the mode (for a nominal class).

    :param params: parameters in textual form to pass to the rulesZeroR Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.ZeroR')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 45
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def rules_jrip(params=None):
    '''The RIPPER rule learner by Weka

    :param params: parameters in textual form to pass to the JRip Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.rules.JRip')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 46
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def ibk(params=None):
    '''K-nearest neighbours classifier by Weka

    :param params: parameters in textual form to pass to the IBk Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.lazy.IBk')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 47
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def logistic(params=None):
    '''Logistic regression by Weka

    :param params: parameters in textual form to pass to the Logistic Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.Logistic')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 48
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def smo(params=None):
    '''A support vector classifier, trained using the Sequential Minimal Optimization (SMO) algorithm

    :param params: parameters in textual form to pass to the SMO Weka class
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.functions.SMO')()
    model.setOptions(common.parse_options(params))
    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 49
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def j48(params=None):
    '''Weka decision tree learner J48

    :param params: parameters in textual form to pass to the J48 Weka class (e.g. "-C 0.25 -M 2")
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.J48')()
    model.setOptions(common.parse_options(params))

    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 50
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def j48(params=None):
    '''Weka decision tree learner J48

    :param params: parameters in textual form to pass to the J48 Weka class (e.g. "-C 0.25 -M 2")
    :return: a WekaClassifier object
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    model = jp.JClass('weka.classifiers.trees.J48')()
    model.setOptions(common.parse_options(params))

    return WekaClassifier(common.serialize_weka_object(model))
Esempio n. 51
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    def determine_analyzer_path(self):
        """Determine the path of the analyzer. Basically creating a temporary
        directory in the systemdrive, i.e., C:\\."""
        systemdrive = self.determine_system_drive()

        options = parse_options(self.options["options"])
        if options.get("analpath"):
            dirpath = systemdrive + options["analpath"]
            r = self.post("/mkdir", data={"dirpath": dirpath})
            self.analyzer_path = dirpath
        else:
            r = self.post("/mkdtemp", data={"dirpath": systemdrive})
            self.analyzer_path = r.json()["dirpath"]
Esempio n. 52
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def normalize(bunch, params=None):
    '''Normalizes all numeric values in the given dataset (apart from the class attribute, if set)

    :param bunch: dataset
    :param params: parameters in textual form to pass to the Normalize Weka class
    :return: dataset
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    # Instances data!
    data = utilities.convertBunchToWekaInstances(bunch)

    Filter = jp.JClass('weka.filters.Filter')

    Normalize = jp.JClass('weka.filters.unsupervised.attribute.Normalize')
    normalize_filter = Normalize()
    normalize_filter.setOptions(common.parse_options(params))
    normalize_filter.setInputFormat(data)

    new_instances = Filter.useFilter(data, normalize_filter)

    return utilities.convertWekaInstancesToBunch(new_instances)
Esempio n. 53
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def normalize(bunch, params=None):
    '''Normalizes all numeric values in the given dataset (apart from the class attribute, if set)

    :param bunch: dataset
    :param params: parameters in textual form to pass to the Normalize Weka class
    :return: dataset
    '''
    if not jp.isThreadAttachedToJVM():
        jp.attachThreadToJVM()

    # Instances data!
    data = utilities.convertBunchToWekaInstances(bunch)

    Filter = jp.JClass('weka.filters.Filter')

    Normalize = jp.JClass('weka.filters.unsupervised.attribute.Normalize')
    normalize_filter = Normalize()
    normalize_filter.setOptions(common.parse_options(params))
    normalize_filter.setInputFormat(data)

    new_instances = Filter.useFilter(data, normalize_filter)

    return utilities.convertWekaInstancesToBunch(new_instances)
Esempio n. 54
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def handle_use(man, match):
    options = common.parse_options(man, match.group("options"),
                                   [("sep", "."), ("ref", None)])
    man.doxygen.add_use(match.group("path"), options["sep"], options["ref"])
Esempio n. 55
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#!/usr/bin/env python

from __future__ import print_function

import os.path

import common
import utils.file_utils as file_utils
import utils.mvn_utils as mvn_utils

(ROOT_PROJECT_PATH, MAVEN_REPO_PATH, MVN_OPTS, ROOT_ONLY, TRACK_UNVERSIONED,
 vcs_gateway) = common.parse_options()


def is_important(file_path):
    return not file_path.endswith(".iml")


def get_unique_name(root_project_path):
    if os.name == 'nt':
        result = root_project_path.replace('\\', "_")
    else:
        result = root_project_path.replace('/', "_")

    result = result.replace(":", "_")
    return result


changed_files = vcs_gateway.get_local_changed_files(ROOT_PROJECT_PATH,
                                                    not TRACK_UNVERSIONED)
important_files = filter(is_important, changed_files)
Esempio n. 56
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#!/usr/bin/env python

import os.path

import sys

import common
import utils.collections as collections
import utils.file_utils as file_utils
import utils.mvn_utils as mvn_utils

(ROOT_PROJECT_PATH, MAVEN_REPO_PATH, MVN_OPTS, ROOT_ONLY, track_unversioned, vcs_gateway) = common.parse_options()


def incremental_rebuild(last_revision, current_revision):
    changed_files = vcs_gateway.get_revision_changed_files(ROOT_PROJECT_PATH, last_revision, current_revision)

    changed_project_poms = set([])

    for file_path in changed_files:
        file_path = file_utils.normalize_path(file_path)

        if os.path.isdir(file_path):
            parent_path = file_path
        else:
            parent_path = os.path.dirname(file_path)

        while parent_path and not (file_utils.is_root(parent_path)):
            pom_path = os.path.join(parent_path, "pom.xml")

            if os.path.exists(pom_path):
Esempio n. 57
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#!/usr/bin/env python

from __future__ import print_function

import os.path

import common
import utils.file_utils as file_utils
import utils.mvn_utils as mvn_utils

(ROOT_PROJECT_PATH, MAVEN_REPO_PATH, MVN_OPTS, ROOT_ONLY, TRACK_UNVERSIONED, vcs_gateway) = common.parse_options()

def is_important(file_path):
    return not file_path.endswith(".iml")


def get_unique_name(root_project_path):
    if os.name == 'nt':
        result = root_project_path.replace('\\', "_")
    else:
        result = root_project_path.replace('/', "_")

    result = result.replace(":", "_")
    return result


changed_files = vcs_gateway.get_local_changed_files(ROOT_PROJECT_PATH, not TRACK_UNVERSIONED)
important_files = filter(is_important, changed_files)

pom_paths = set([])
Esempio n. 58
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def handle_use(man, match):
	options = common.parse_options(man, match.group("options"),
		[("sep", "."), ("ref", None)])
	man.doxygen.add_use(match.group("path"), options["sep"], options["ref"])