Stepwise possibilistic c-regressions

Shao Tung Chang, Kang Ping Lu, Miin Shen Yang*

*此作品的通信作者

研究成果: 雜誌貢獻期刊論文同行評審

6 引文 斯高帕斯(Scopus)

摘要

In 1993, Hathaway and Bezdek combined switching regressions with fuzzy c-means (FCM) to create fuzzy c-regressions (FCR). The FCR algorithm had been widely studied and applied in various areas. However, membership of the FCR does not always correspond to the degree of belonging and it can be inaccurate in a noisy environment. Krishnapuram and Keller (1993) proposed a possibilistic c-means (PCM) whereby membership gives a much better explanation of the degree of belonging and it is more robust to noise and outliers than the FCM. Therefore, we incorporate possibilistic clustering into switching regression models and term it possibilistic c-regressions (PCR). Although a PCR ameliorates the problem of outliers and noisy points, a PCR still depends heavily on initial values. In this paper, we propose a schema for a nested stepwise procedure for a PCR, called a stepwise PCR (SPCR) method, which repeats the PCR on a series of nested subsets using the clustering results of the previous subset as good initial values for the PCR for the succeeding subset. When the smallest subset, D1, is determined at the location where the c regression models separate sufficiently, the number of clusters and the cluster centers in D1 are determined using a modified mountain method, so data in D1 is properly partitioned, which provides good initial values for the following PCR. The proposed SPCR is unsupervised, does not require initialization and is unaffected by noise and outliers. Several experiments and real examples demonstrate the superiority and effectiveness of the proposed SPCR method.

原文英語
頁(從 - 到)307-322
頁數16
期刊Information Sciences
334-335
DOIs
出版狀態已發佈 - 2016 3月 20

ASJC Scopus subject areas

  • 軟體
  • 控制與系統工程
  • 理論電腦科學
  • 電腦科學應用
  • 資訊系統與管理
  • 人工智慧

指紋

深入研究「Stepwise possibilistic c-regressions」主題。共同形成了獨特的指紋。

引用此