Hybrid Method for Fast SVM Training in Applications Involving Large Volumes of Data

M. Wani
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引用次数: 4

Abstract

One of the problems of training a Support Vector Machine (SVM) for applications involving large volumes of data is how to solve the constrained quadratic programming issue. The optimization process suffers from the problem of large memory requirement and computation time. In this paper we propose a hybrid genetic algorithm based SVM that addresses the large memory requirement and computation time problem. The system operates in two main stages. During first stage it obtains a subset of features using genetic algorithm and during second stage it uses genetic algorithm to train the SVM using subset of features. The proposed system is tested on gene expression profile data sets. The experiment results show that the proposed hybrid system is efficient from memory and time computational point of views without compromising classification accuracy results.
在大数据量应用中快速训练SVM的混合方法
支持向量机在大数据量应用中的训练问题之一是如何解决约束二次规划问题。优化过程存在内存需求大、计算时间长等问题。本文提出了一种基于混合遗传算法的支持向量机,以解决大内存需求和计算时间的问题。该系统主要分为两个阶段。第一阶段利用遗传算法获得特征子集,第二阶段利用遗传算法利用特征子集训练SVM。该系统在基因表达谱数据集上进行了测试。实验结果表明,该混合系统在不影响分类精度的情况下,从内存和时间计算的角度来看是有效的。
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