Multi-Class SVMs Based on Fuzzy Integral Mixture for Handwritten Digit Recognition

H. Nemmour, Y. Chibani
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引用次数: 7

Abstract

The major drawback of support vector machines (SVMs) is that the training time grows fastly with respect to the number of training samples. This issue becomes more critical for multi-class problems where a set of binary SVMs must be performed. This is the case of the one-against-all (OAA) approach, which is the most widely used implementation of multi-class SVMs. In this paper, we propose a new divide-and-conquer method to reduce the training time of OAA-based SVMs. Experimental analysis is conducted on handwritten digit recognition task. The results obtained indicate that the proposed scheme allows a significant training and testing time improvement. In addition, a significant improvement in generalization performance was obtained
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基于模糊积分混合的多类支持向量机手写数字识别
支持向量机(svm)的主要缺点是训练时间相对于训练样本的数量增长很快。对于必须执行一组二进制支持向量机的多类问题,这个问题变得更加关键。这就是一对所有(OAA)方法的情况,它是多类svm的最广泛使用的实现。在本文中,我们提出了一种新的分治方法来减少基于oaa的支持向量机的训练时间。对手写体数字识别任务进行了实验分析。实验结果表明,该方案可显著缩短训练和测试时间。此外,在泛化性能上也有了明显的提高
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