Soft clustering - fuzzy and rough approaches and their extensions and derivatives
Artículo
Open/ Download
Publication date
2013Metadata
Show full item record
Cómo citar
Peters, Georg
Cómo citar
Soft clustering - fuzzy and rough approaches and their extensions and derivatives
Abstract
Clustering is one of the most widely used approaches in data mining with real life
applications in virtually any domain. The huge interest in clustering has led to a possibly
three-digit number of algorithms with the k-means family probably the most widely used
group of methods. Besides classic bivalent approaches, clustering algorithms belonging to
the domain of soft computing have been proposed and successfully applied in the past four
decades. Bezdek’s fuzzy c-means is a prominent example for such soft computing cluster
algorithms with many effective real life applications. More recently, Lingras and West enriched
this area by introducing rough k-means. In this article we compare k-means to fuzzy
c-means and rough k-means as important representatives of soft clustering. On the basis of
this comparison, we then survey important extensions and derivatives of these algorithms;
our particular interest here is on hybrid clustering, merging fuzzy and rough concepts. We
also give some examples where k-means, rough k-means, and fuzzy c-means have been used
in studies.
General note
Artículo de publicación ISI
Identifier
URI: https://repositorio.uchile.cl/handle/2250/126463
DOI: doi 10.1016/j.ijar.2012.10.003
Quote Item
International Journal of Approximate Reasoning 54 (2013) 307–322
Collections