def kernel_combined_custom_poly_modular(train_fname=traindat,
                                        test_fname=testdat,
                                        train_label_fname=label_traindat):
    from modshogun import CombinedFeatures, RealFeatures, BinaryLabels
    from modshogun import CombinedKernel, PolyKernel, CustomKernel
    from modshogun import LibSVM, CSVFile

    kernel = CombinedKernel()
    feats_train = CombinedFeatures()

    tfeats = RealFeatures(CSVFile(train_fname))
    tkernel = PolyKernel(10, 3)
    tkernel.init(tfeats, tfeats)
    K = tkernel.get_kernel_matrix()
    kernel.append_kernel(CustomKernel(K))

    subkfeats_train = RealFeatures(CSVFile(train_fname))
    feats_train.append_feature_obj(subkfeats_train)
    subkernel = PolyKernel(10, 2)
    kernel.append_kernel(subkernel)

    kernel.init(feats_train, feats_train)

    labels = BinaryLabels(CSVFile(train_label_fname))
    svm = LibSVM(1.0, kernel, labels)
    svm.train()

    kernel = CombinedKernel()
    feats_pred = CombinedFeatures()

    pfeats = RealFeatures(CSVFile(test_fname))
    tkernel = PolyKernel(10, 3)
    tkernel.init(tfeats, pfeats)
    K = tkernel.get_kernel_matrix()
    kernel.append_kernel(CustomKernel(K))

    subkfeats_test = RealFeatures(CSVFile(test_fname))
    feats_pred.append_feature_obj(subkfeats_test)
    subkernel = PolyKernel(10, 2)
    kernel.append_kernel(subkernel)
    kernel.init(feats_train, feats_pred)

    svm.set_kernel(kernel)
    svm.apply()
    km_train = kernel.get_kernel_matrix()
    return km_train, kernel
def kernel_combined_custom_poly_modular (train_fname = traindat,test_fname = testdat,train_label_fname=label_traindat):
    from modshogun import CombinedFeatures, RealFeatures, BinaryLabels
    from modshogun import CombinedKernel, PolyKernel, CustomKernel
    from modshogun import LibSVM, CSVFile
   
    kernel = CombinedKernel()
    feats_train = CombinedFeatures()
    
    tfeats = RealFeatures(CSVFile(train_fname))
    tkernel = PolyKernel(10,3)
    tkernel.init(tfeats, tfeats)
    K = tkernel.get_kernel_matrix()
    kernel.append_kernel(CustomKernel(K))
        
    subkfeats_train = RealFeatures(CSVFile(train_fname))
    feats_train.append_feature_obj(subkfeats_train)
    subkernel = PolyKernel(10,2)
    kernel.append_kernel(subkernel)

    kernel.init(feats_train, feats_train)
    
    labels = BinaryLabels(CSVFile(train_label_fname))
    svm = LibSVM(1.0, kernel, labels)
    svm.train()

    kernel = CombinedKernel()
    feats_pred = CombinedFeatures()

    pfeats = RealFeatures(CSVFile(test_fname))
    tkernel = PolyKernel(10,3)
    tkernel.init(tfeats, pfeats)
    K = tkernel.get_kernel_matrix()
    kernel.append_kernel(CustomKernel(K))

    subkfeats_test = RealFeatures(CSVFile(test_fname))
    feats_pred.append_feature_obj(subkfeats_test)
    subkernel = PolyKernel(10, 2)
    kernel.append_kernel(subkernel)
    kernel.init(feats_train, feats_pred)

    svm.set_kernel(kernel)
    svm.apply()
    km_train=kernel.get_kernel_matrix()
    return km_train,kernel
예제 #3
0
C=0.017
epsilon=1e-5
tube_epsilon=1e-2
svm=LibSVM()
svm.set_C(C, C)
svm.set_epsilon(epsilon)
svm.set_tube_epsilon(tube_epsilon)

for i in range(3):
	data_train=random.rand(num_feats, num_vec)
	data_test=random.rand(num_feats, num_vec)
	feats_train=RealFeatures(data_train)
	feats_test=RealFeatures(data_test)
	labels=Labels(random.rand(num_vec).round()*2-1)

	svm.set_kernel(LinearKernel(size_cache, scale))
	svm.set_labels(labels)

	kernel=svm.get_kernel()
	print("kernel cache size: %s" % (kernel.get_cache_size()))

	kernel.init(feats_test, feats_test)
	svm.train()

	kernel.init(feats_train, feats_test)
	print(svm.apply().get_labels())

	#kernel.remove_lhs_and_rhs()

	#import pdb
	#pdb.set_trace()