支持向量机回归的模糊模型

Pei-Yi Hao, J. Chiang
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引用次数: 13

摘要

在人为估计有影响的系统中,必须考虑模糊性。这种模糊现象的模型可以表示为模糊系统方程,并用Zadeh可拓原理定义的模糊函数来描述。本文将模糊集理论的概念引入到支持向量机回归中。SVM回归中需要识别的参数,如权重向量内的分量、偏置项等都是模糊数,训练样本中的期望输出也是模糊数。这种集成保留了支持向量机回归模型和模糊回归模型的优点,其中支持向量机学习理论表征了学习机的特性,使它们能够很好地泛化不可见的数据,模糊集理论对于在评价系统中找到模糊结构可能非常有用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A fuzzy model of support vector machine regression
Fuzziness must he considered in systems where human estimation is influential. A model of such a vague phenomenon might he represented as a fuzzy system equation which can he described by the fuzzy functions defined by Zadeh’s extension principle. In this paper, we incorporate the concept of fuzzy set theory into the support vector machine (SVM) regression. The parameters to he identified in SVM regression, such as the components within the weight vector and the bias term, are fuzzy numbers, and the desired outputs in training samples are also fuzzy numbers. This integration preserves the benefits of SVM regression model and fuzzy regression model, where the SVM learning theory characterizes properties of learning machines which enable them to generalize well the unseen data and the fuzzy set theory might he very useful for finding a fuzzy structure in an evaluation system.
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