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Hierarchical and Reweighting Cluster Kernels for Semi-Supervised Learning
Author(s) -
Zalán Bodó,
Lehel Csató
Publication year - 2010
Publication title -
international journal of computers communications and control
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.422
H-Index - 33
eISSN - 1841-9844
pISSN - 1841-9836
DOI - 10.15837/ijccc.2010.4.2496
Subject(s) - computer science , kernel (algebra) , exploit , generalization , artificial intelligence , cluster analysis , machine learning , semi supervised learning , tree kernel , kernel method , pattern recognition (psychology) , set (abstract data type) , feature vector , supervised learning , hierarchical clustering , data mining , kernel embedding of distributions , support vector machine , artificial neural network , mathematics , mathematical analysis , computer security , combinatorics , programming language
Recently semi-supervised methods gained increasing attention and many novel semi-supervised learning algorithms have been proposed. These methods exploit the information contained in the usually large unlabeled data set in order to improve classification or generalization performance. Using data-dependent kernels for kernel machines one can build semi-supervised classifiers by building the kernel in such a way that feature space dot products incorporate the structure of the data set. In this paper we propose two such methods: one using specific hierarchical clustering, and another kernel for reweighting an arbitrary base kernel taking into account the cluster structure of the data.

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