A Random Sampling Technique for Training Support Vector Machines.

ALT '01: Proceedings of the 12th International Conference on Algorithmic Learning Theory(2001)

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摘要
Random sampling techniques have been developed for combinatorial optimization problems. In this note, we report an application of one of these techniques for training support vector machines (more precisely, primal-form maximal-margin classifiers) that solve two-group classification problems by using hyperplane classifiers. Through this research, we are aiming (I) to design efficient and theoretically guaranteed support vector machine training algorithms, and (II) to develop systematic and efficient methods for finding "outliers", i.e., examples having an inherent error.
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关键词
efficient method,machine training algorithm,theoretically guaranteed support vector,training support vector machine,combinatorial optimization problem,hyperplane classifier,inherent error,primal-form maximal-margin classifier,random sampling technique,two-group classification problem,Random Sampling Technique,Training Support,Vector Machines
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