Content area

Abstract

Cluster analysis aims at identifying groups of similar objects and, therefore helps to discover distribution of patterns and interesting correlations in large data sets. It has been subject of wide research since it arises in many application domains in engineering, business and social sciences. Especially, in the last years the availability of huge transactional and experimental data sets and the arising requirements for data mining created needs for clustering algorithms that scale and can be applied in diverse domains.

This paper introduces the fundamental concepts of clustering while it surveys the widely known clustering algorithms in a comparative way. Moreover, it addresses an important issue of clustering process regarding the quality assessment of the clustering results. This is also related to the inherent features of the data set under concern. A review of clustering validity measures and approaches available in the literature is presented. Furthermore, the paper illustrates the issues that are under-addressed by the recent algorithms and gives the trends in clustering process. [PUBLICATION ABSTRACT]

Details

Title
On Clustering Validation Techniques
Author
Halkidi, Maria; Batistakis, Yannis; Vazirgiannis, Michalis
Pages
107-145
Publication year
2001
Publication date
Dec 2001
Publisher
Springer Nature B.V.
ISSN
09259902
e-ISSN
15737675
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
200175952
Copyright
Copyright Kluwer Academic Publishers Dec 2001