Title
An ensemble algorithm for Kohonen self-organizing map with different sizes.
Abstract
Data Clustering aims to discover groups within the data based on similarities, with a minimal, if any, knowledge of their structure. Variations in the results may occur due to many factors, including algorithm parameters, initialization and stopping criteria. The usage of different attributes or even different subsets of data usually lead to different results. Self-organizing maps (SOM) has been widely used for a variety of tasks regarding data analysis, including data visualization and clustering. A machine committee, or ensemble, is a set of neural networks working independently with some system that enable the combination of individual results into a single output, with the aim to achieve a better generalization compared to a unique neural network. This article presents a new ensemble method that uses SOM networks. Cluster validity indexes are used to combine neuron weights from different maps with different sizes. Results are shown from simulations with real and synthetic data, from the UCI Repository and Fundamental Clustering Problems Suite. The proposed method presented promising results, with increased performance compared with conventional single Kohonen map.
Year
DOI
Venue
2017
10.1093/jigpal/jzx046
LOGIC JOURNAL OF THE IGPL
Keywords
Field
DocType
Fusion,Kohonen Self-Organizing Maps,cluster validity index
Pattern recognition,Computer science,Kohonen self organizing map,Artificial intelligence
Journal
Volume
Issue
ISSN
25
SP6
1367-0751
Citations 
PageRank 
References 
0
0.34
17
Authors
3
Name
Order
Citations
PageRank
Leandro Antonio Pasa121.41
José Alfredo F. Costa25210.11
Marcial Guerra de Medeiros310.71