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Multiple Clustering Solutions Analysis Through Lest-Square Consensus Algorithms

Academic Article
Publication Date:
2010
abstract:
Clustering is one of the most important unsupervised learning problems and it deals with finding a structure in a collection of unlabeled data; however, different clustering algorithms applied to the same data-set produce different solutions. In many applications the problem of multiple solutions becomes crucial and providing a limited group of good clusterings is often more desirable than a single solution. In this work we propose the Least Square Consensus clustering that allows a user to extrapolate a small number of different clustering solutions from an initial (large) set of solutions obtained by applying any clustering algorithm to a given data-set. Two different implementations are presented. In both cases, each consensus is accomplished with a measure of quality defined in terms of Least Square error and a graphical visualization is provided in order to make immediately interpretable the result. Numerical experiments are carried out on both synthetic and real data-sets.
Iris type:
01.01 Articolo in rivista
List of contributors:
DE FEIS, Italia; Angelini, Claudia
Authors of the University:
ANGELINI CLAUDIA
DE FEIS ITALIA
Handle:
https://iris.cnr.it/handle/20.500.14243/32419
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