[Comparative efficiency of algorithms based on support vector machines for binary classification].

Biofizika Pub Date : 2015-01-01
N O Kadyrova, L V Pavlova
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Abstract

Methods of construction of support vector machines require no further a priori infoimation and provide big data processing, what is especially important for various problems in computational biology. The question of the quality of learning algorithms is considered. The main algorithms of support vector machines for binary classification are reviewed and they were comparatively explored for their efficiencies. The critical analysis of the results of this study revealed the most effective support-vector-classifiers. The description of the recommended algorithms, sufficient for their practical implementation, is presented.

[基于支持向量机的二值分类算法效率比较]。
构建支持向量机的方法不需要进一步的先验信息,并提供大数据处理,这对于计算生物学中的各种问题尤为重要。考虑了学习算法的质量问题。综述了支持向量机用于二值分类的主要算法,并对其有效性进行了比较探讨。本研究结果的关键分析揭示了最有效的支持向量分类器。对推荐的算法进行了描述,以满足其实际实现的需要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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