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支持向量机训练算法研究

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摘要 本文介绍了基于统计学习理论的支持向量机的各种训练算法,对其进行了归类分析,比较了各个算法的优缺点。最后指出了SVM及其训练算法存在的一些问题和进一步研究动向。
作者 马海兴
出处 《福建电脑》 2007年第10期52-53,共2页 Journal of Fujian Computer
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