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Support Vector Machine Classifier(s) based on Shogun
This is a simple base interface
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num_threads = Parameter(1, min= 1, descr= 'Number of threads t
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_KERNELS = {"linear":(shogun.Kernel.LinearKernel, (), LinearSV
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_KNOWN_PARAMS = ['C', 'epsilon']
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_KNOWN_KERNEL_PARAMS = []
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_clf_internals = _SVM._clf_internals+ ['sg', 'retrainable'] Describes some specifics about the classifier -- is that it is doing regression for instance.... |
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svm = property(fget= lambda self: self.__svm) Access to the SVM model. |
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traindataset = property(fget= lambda self: self.__traindataset) Dataset which was used for training |
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__svm Holds the trained svm. |
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This is the base class of all classifier that utilize so far just SVM classifiers provided by shogun. TODO Documentation if this all works ;-)
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num_threads
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_KERNELS
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traindatasetDataset which was used for training TODO -- might better become state variable I guess
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