Extensions of vector quantization for incremental clustering |
| |
Authors: | Edwin Lughofer |
| |
Affiliation: | 1. Faculty of Informatics, University of Debrecen, Kassai út 26, H-4028 Debrecen, Hungary;2. Institut für Angewandte Statistik, Johannes Kepler University in Linz, Altenberger Straße 69, A-4040 Linz, Austria;3. Departamento de Matemática, Universidad Técnica Federico Santa María, Casilla 110-V, Valparaíso, Chile;1. Data Science Group, School of Computing and Communications, Lancaster University, Lancaster, LA1 4WA, UK;2. Birmingham Institute of Forest Research (BIFoR), University of Birmingham, Edgbaston, Birmingham, B15 2TT, UK;1. Faculty of Electrical Engineering, University of Ljubljana, Tr?a?ka 25, Ljubljana, SI-1000, Slovenia;2. Department of Knowledge-Based Mathematical Systems, Johannes Kepler University, Altenbergerstrasse 69, Linz, Austria |
| |
Abstract: | In this paper, we extend the conventional vector quantization by incorporating a vigilance parameter, which steers the tradeoff between plasticity and stability during incremental online learning. This is motivated in the adaptive resonance theory (ART) network approach and is exploited in our paper for forming a one-pass incremental and evolving variant of vector quantization. This variant can be applied for online clustering, classification and approximation tasks with an unknown number of clusters. Additionally, two novel extensions are described: one concerns the incorporation of the sphere of influence of clusters in the vector quantization learning process by selecting the ‘winning cluster’ based on the distances of a data point to the surface of all clusters. Another one introduces a deletion of cluster satellites and an online split-and-merge strategy: clusters are dynamically split and merged after each incremental learning step. Both strategies prevent the algorithm to generate a wrong cluster partition due to a bad a priori setting of the most essential parameter(s). The extensions will be applied to clustering of two- and high-dimensional data, within an image classification framework and for model-based fault detection based on data-driven evolving fuzzy models. |
| |
Keywords: | |
本文献已被 ScienceDirect 等数据库收录! |
|