CiteULike is a free online bibliography manager. Register and you can start organising your references online.
Tags

Challenges in model-based clustering

by: Volodymyr Melnykov
WIREs Comp Stat, Vol. 5, No. 2. (1 March 2013), pp. 135-148, doi:10.1002/wics.1248  Key: citeulike:12174701

Formatted Citation


Show HTML

Likes (beta)

This copy of the article hasn't been liked by anyone yet.

View FullText article


Abstract

Model-based clustering is an increasingly popular area of cluster analysis that relies on probabilistic description of data by means of finite mixture models. Mixture distributions prove to be a powerful technique for modeling heterogeneity in data. In model-based clustering, each data group is seen as a sample from one or several mixture components. Despite attractive interpretation, model-based clustering poses many challenges. This paper discusses some of the most important problems a researcher might encounter while applying the model-based cluster analysis. WIREs Comput Stat 2013, 5:135–148. doi: 10.1002/wics.1248


dmusgrove's tags for this article

Citations (CiTO)

No CiTO relationships defined

X There are no reviews yet

X Posting History


X Export records

Privacy Statement | Terms & Conditions
CiteULike organises scholarly (or academic) papers or literature and provides bibliographic (which means it makes bibliographies) for universities and higher education establishments. It helps undergraduates and postgraduates. People studying for PhDs or in postdoctoral (postdoc) positions. The service is similar in scope to EndNote or RefWorks or any other reference manager like BibTeX, but it is a social bookmarking service for scientists and humanities researchers.