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Clustering based large margin classification: A scalable approach using SOCP formulation
, C. Bhattacharyya, M.N. Murty
Published in
2006
Volume: 2006
   
Pages: 674 - 679
Abstract
This paper presents a novel Second Order Cone Programming (SOCP) formulation for large scale binary classification tasks. Assuming that the class conditional densities are mixture distributions, where each component of the mixture has a spherical covariance, the second order statistics of the components can be estimated efficiently using clustering algorithms like BIRCH. For each cluster, the second order moments are used to derive a second order cone constraint via a Chebyshev-Cantelli inequality. This constraint ensures that any data point in the cluster is classified correctly with a high probability. This leads to a large margin SOCP formulation whose size depends on the number of clusters rather than the number of training data points. Hence, the proposed formulation scales well for large datasets when compared to the sate-of-the-art classifiers, Support Vector Machines (SVMs). Experiments on real world and synthetic datasets show that the proposed algorithm outperforms SVM solvers in terms of training time and achieves similar accuracies. Copyright 2006 ACM.
About the journal
JournalProceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining