首页> 中文期刊> 《昆明学院学报》 >基于模糊集和粗糙集的支持向量聚类算法研究

基于模糊集和粗糙集的支持向量聚类算法研究

         

摘要

目前很多已知的聚类算法对于异常点的处理存在不合理的问题,将模糊集和粗糙集的相关理论加入到支持向量聚类算法中,可增加异常点处理的合理性,并得到一种新的改进算法,将其称为模糊—粗糙支持向量聚类算法。当支持向量集作为一个特殊的聚类,通过元素间的亲密程度,模糊边界的隶属度可以被计算出来。而下近似集包含的样本点建立在算法训练阶段获得的超球体内。在检测异常值和计算任意轮廓的聚类方面,该算法具有较大的优势和潜力。%Due to many clustering algorithms known today are not reasonable in dealing with outliers,the theory of fuzzy set and rough set are added to the support vector clustering algorithm,which can increase the rationality of outlier processing to present a new im-proved algorithm called fuzzy-rough support vector clustering algorithm.When the support vector set is used as a special clustering, the membership degree of the fuzzy boundary can be calculated by the closeness degree between the elements.The lower approximation set contains the sample points set up in the training phase of the algorithm in the hyper sphere.The algorithm has a considerable ad-vantage and potential in detecting outliers and calculating the clustering of arbitrary profiles.

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