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A Fast Training Algorithm for SVM Based on the Convex Hulls Algorithm

机译:基于凸包算法的支持向量机快速训练算法

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摘要

From the geometric point of view and by choosing the most informative patterns that have the most possibility to become the support vectors in the training data by using the convex hulls algorithm,a fast training algorithm for SVM is given in this paper.In this training algorithm for SVM,the convex hull vectors are chosen firstly,and the convex hull vectors are used to train the SVM.The characteristics of the convex hulls algorithm are analyzed by experiments with training sets of different size and dimension.Classification experiments results reveal that the given fast training algorithm for SVM has better training performance comparing with the traditional training algorithm for SVM,and has distinct performance improvement when deal with the dataset of low dimension and large size.
机译:从几何的角度出发,通过使用凸包算法选择最有可能成为训练数据支持向量的信息量最大的模式,本文提出了一种支持向量机的快速训练算法。对于支持向量机,首先选择凸包向量,然后用凸包向量对SVM进行训练。通过对不同大小和尺寸的训练集进行实验,分析了凸包算法的特点。与传统的SVM训练算法相比,用于SVM的快速训练算法具有更好的训练性能,并且在处理低维和大尺寸数据集时具有明显的性能提升。

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