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Binary tree of posterior probability support vector machines

机译:后验概率支持向量机的二叉树

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Posterior probability support vector machines (PPSVMs) prove robust against noises and outliers and need fewer storage support vectors (SVs). Gonen et al. (2008) extended PPSVMs to a multiclass case by both single-machine and multimachine approaches. However, these extensions suffer from low classification efficiency, high computational burden, and more importantly, unclassifiable regions. To achieve higher classification efficiency and accuracy with fewer SVs, a binary tree of PPSVMs for the multiclass classification problem is proposed in this letter. Moreover, a Fisher ratio separability measure is adopted to determine the tree structure. Several experiments on handwritten recognition datasets are included to illustrate the proposed approach. Specifically, the Fisher ratio separability accelerated binary tree of PPSVMs obtains overall test accuracy, if not higher than, at least comparable to those of other multiclass algorithms, while using significantly fewer SVs and much less test time.
机译:后验概率支持向量机(PPSVM)证明对噪声和离群值具有鲁棒性,并且需要更少的存储支持向量(SV)。 Gonen等。 (2008年)通过单机方法和多机方法将PPSVM扩展到多类情况。但是,这些扩展的缺点是分类效率低,计算负担大,更重要的是无法分类的区域。为了用更少的SV实现更高的分类效率和准确性,本文针对多类分类问题提出了PPSVM的二叉树。此外,采用费舍尔比率可分离性度量来确定树结构。包括对手写识别数据集的一些实验,以说明所提出的方法。具体而言,PPSVM的费希尔比率可分离性加速二叉树获得的总体测试准确性(如果不高于),至少与其他多类算法的可比性相当,而使用的SV却少得多,测试时间也少得多。

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