基于后验概率的多类SVM重构策略

Deihui Wu
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引用次数: 0

摘要

在分析比较现有多类支持向量机(SVM)的一对一(OVO)和一对余(OVR)分解方法存在问题的基础上,提出了一种基于后验概率的多类支持向量机(SVM)分类器重构策略。该方法不仅可以提高图像的识别精度,而且可以解决传统图像重构中存在的区域不可分类问题。首先,利用测试样本到最优分类超平面的几何距离作为估计分类概率的准则,以降低不同的二值支持向量机分类器之间存在的不可比性;然后基于贝叶斯后验概率理论,给出了基于二值支持向量机的分类器在OVO分解中概率输出的组合策略,并考虑了它们的不同先验概率。最后,通过OVR分解计算先验概率。为了验证该策略的有效性,在UCI数据库上进行了实验;实验结果表明,所提出的重构策略比传统的重构策略更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconstruction Strategy for Multi-Class SVM Based on Posterior Probability
After analysis and comparison of the problems of the existing one-versus-one (OVO) and one-versus-rest (OVR) decomposition methods of multi-class support vector machine (SVM), the novel strategy based on posterior probability is presented to reconstruct a multi-class classifier from binary SVM-based classifiers. The new reconstruction strategy can increase recognition accuracy and resolve the unclassifiable region problems in the conventional ones. Firstly, the geometric distance of test sample to the optimal classification hyperplane is used as the criterion of estimating the class probabilities to decrease the incomparability existing in different binary SVM-based classifiers. Then based on the Bayesian posterior probability theory, the combination strategy of the probability output among these binary SVM-based classifiers in OVO decomposition is given and the different prior probabilities of them are considered. Lastly, the prior probabilities are evaluated by OVR decomposition. In order to verify the effectiveness of this strategy, experiments have been made on UCI database; the experiment results show that the reconstruction strategy presented is effective over conventional ones.
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