Ramp-based twin support vector clustering

被引:0
|
作者
Zhen Wang
Xu Chen
Yuan-Hai Shao
Chun-Na Li
机构
[1] Inner Mongolia University,School of Mathematical Sciences
[2] Hainan University,School of Management
来源
关键词
Clustering; Plane-based clustering; Ramp function; Twin support vector clustering; Nonconvex programming;
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暂无
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学科分类号
摘要
Traditional plane-based clustering methods measure the within-cluster or between-cluster scatter by linear, quadratic or some other unbounded functions, which are sensitive to the samples far from the cluster center. This paper introduces the ramp functions into plane-based clustering and proposes a ramp-based twin support vector clustering (RampTWSVC). RampTWSVC is very robust to the samples far from the cluster center, because its within-cluster and between-cluster scatters are measured by the bounded ramp functions. Thus, it is easier to find the intrinsic clusters than other plane-based clustering methods. The nonconvex programming problem in RampTWSVC is solved efficiently through an alternating iteration algorithm, and its local solution can be obtained in a finite number of iterations theoretically. In addition, its nonlinear manifold clustering formation is also proposed via a kernel trick. Experimental results on several benchmark datasets show the better performance of our RampTWSVC compared with other plane-based clustering methods.
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收藏
页码:9885 / 9896
页数:11
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