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引用次数: 0

摘要

提出了一种基于小生境的模糊支持向量机算法。该算法通过对样本生态位与类生态位的比较,改变了传统支持向量机简单使用欧氏距离来度量样本与类关系的方法,采用类生态位的最小半径,克服了传统支持向量机对噪声和离群点敏感、有效样本区分性能差的缺点。实验数据表明,与传统支持向量机仅利用样本与类中心之间的距离相比,该算法可以提高收敛速度,从而大大增强有效样本与噪声样本的区分能力。
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A new algorithm of fuzzy support vector machine based on niche
A new algorithm of fuzzy support vector machine based on niche is presented in this paper. In this algorithm, through comparing samples niche with class niche, the method of simply using Euclidean distance to measure the relationship of samples and class in the traditional support vector machine is changed by using the minimum radius in class niche, and the disadvantages of traditional support vector machine, which are sensitive to noise and outliers, and poor performance of differentiation of valid samples are overcome. Experimental data show that compared with the traditional support vector machine which only uses the distance between the sample and the center of class, this new algorithm can improve the convergence speed, and thus greatly enhance the discrimination between valid samples and noise samples.
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