Memorias de investigación
Artículos en revistas:
Fuzzy c-means clustering using Jeffreys-divergence based similarity measure
Año:2019

Áreas de investigación
  • Ciencias de la computación y tecnología informática

Datos
Descripción
In clustering, similarity measure has been one of the major factors for discovering the natural grouping of a given dataset by identifying hidden patterns. To determine a suitable similarity measure is an open problem in clustering analysis for several years. The purpose of this study is to make known a divergence based similarity measure. The notion of the proposed similarity measure is derived from Jeffrey-divergence. Various features of the proposed similarity measure are explained. Afterwards we develop fuzzy c-means (FCM) by making use of the proposed similarity measure, which guarantees to converge to local minima. The various characteristics of the modified FCM algorithm are also addressed. Some well known real-world and synthetic datasets are considered for the experiments. In addition to that two remote sensing image datasets are also adopted in this work to illustrate the effectiveness of the proposed FCM over some existing methods. All the obtained results demonstrate that FCM with divergence based proposed similarity measure outperforms three latest FCM algorithms.
Internacional
Si
JCR del ISI
Si
Título de la revista
Applied Soft Computing
ISSN
1568-4946
Factor de impacto JCR
5,472
Información de impacto
Volumen
88
DOI
10.1016/j.asoc.2019.106016
Número de revista
Desde la página
106016
Hasta la página
106027
Mes
MARZO
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Participantes

Grupos de investigación, Departamentos, Centros e Institutos de I+D+i relacionados
  • Creador: Departamento: Arquitectura y Tecnología de Sistemas Informáticos