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Smooth Splicing: A Robust SNN-Based Method for Clustering High-Dimensional Data

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  • JingDong Tan
  • RuJing Wang

Abstract

Sharing nearest neighbor (SNN) is a novel metric measure of similarity, and it can conquer two hardships: the low similarities between samples and the different densities of classes. At present, there are two popular SNN similarity based clustering methods: JP clustering and SNN density based clustering. Their clustering results highly rely on the weighting value of the single edge, and thus they are very vulnerable. Motivated by the idea of smooth splicing in computing geometry, the authors design a novel SNN similarity based clustering algorithm within the structure of graph theory. Since it inherits complementary intensity-smoothness principle, its generalizing ability surpasses those of the previously mentioned two methods. The experiments on text datasets show its effectiveness.

Suggested Citation

  • JingDong Tan & RuJing Wang, 2013. "Smooth Splicing: A Robust SNN-Based Method for Clustering High-Dimensional Data," Mathematical Problems in Engineering, Hindawi, vol. 2013, pages 1-9, June.
  • Handle: RePEc:hin:jnlmpe:295067
    DOI: 10.1155/2013/295067
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