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首页> 外文期刊>電子情報通信学会技術研究報告. 人工知能と知識処理. Artificial Intelligence and Knowledge Based Processing >Time Series Data Pattern Classification using Fuzzy Membership Functions and Support Vector Machines - KOSPI 200: Korea Composite Stock Price Index 200
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Time Series Data Pattern Classification using Fuzzy Membership Functions and Support Vector Machines - KOSPI 200: Korea Composite Stock Price Index 200

机译:使用模糊隶属函数和支持向量机的时间序列数据模式分类-KOSPI 200:韩国综合股价指数200

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摘要

SVM (Support Vector Machine) is a binary classifier proposed by Vapnik. SVM has proven performance in various application fields by minimizing misclassification based on mathematical theories. Recently, FSVM that applies Fuzzy membership function to SVM has been proposed. In this study, it is proven that FSVM (polynomial kernel) has reduced learning time better than SVM when fuzzy membership functions of FSVM have been expanded from 2-dimension to bigger than 3 dimension.
机译:SVM(支持向量机)是Vapnik提出的二进制分类器。通过最小化基于数学理论的错误分类,SVM已在各种应用领域中证明了其性能。最近,已经提出了将模糊隶属度函数应用于SVM的FSVM。在这项研究中,证明了当FSVM的模糊隶属函数从二维扩展到大于3维时,FSVM(多项式内核)比SVM更好地缩短了学习时间。

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