Fast SVM Incremental Learning Based on the Convex Hulls Algorithm

Chong-ming Wu, Xiaodan Wang, Dongying Bai, Hongda Zhang
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引用次数: 8

Abstract

To reduce the computational cost of the incremental learning, a fast SVM incremental learning algorithm based on the convex hulls algorithm is proposed in this paper. The given algorithm is based on utilizing the result of the previous training effectively and retaining the most important samples for the incremental learning to reduce the computational cost. In the process of incremental learning, the convex hull vectors of the previous training and the newly added samples constitute the current training sample set, the current training sample set is pre-extracted from the geometric point of view by using the convex hulls algorithm, the central distance ratio method is used to obtain the between-class convex hull vectors, and the between-class convex hull vectors are used as the training samples in the SVM incremental training. Experiments prove that the given algorithm has better classification performance.
基于凸包算法的快速支持向量机增量学习
为了减少增量学习的计算量,本文提出了一种基于凸包算法的快速支持向量机增量学习算法。该算法是基于有效地利用之前的训练结果,并保留最重要的样本进行增量学习,以减少计算成本。在增量学习过程中,将前一次训练的凸壳向量与新增样本组成当前训练样本集,利用凸壳算法从几何角度预提取当前训练样本集,利用中心距离比法获得类间凸壳向量,并将类间凸壳向量作为SVM增量训练中的训练样本。实验证明,该算法具有较好的分类性能。
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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