A Kernel Bayesian Adaptive Resonance Theory with A Topological Structure.

Int J Neural Syst

3 Department of Informatics, Faculty of Mathematics, Computer Science and Natural Sciences, University of Hamburg, Vogt-Koelln-Str. 30, 22527 Hamburg, Germany.

Published: June 2019

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Article Abstract

This paper attempts to solve the typical problems of self-organizing growing network models, i.e. (a) an influence of the order of input data on the self-organizing ability, (b) an instability to high-dimensional data and an excessive sensitivity to noise, and (c) an expensive computational cost by integrating Kernel Bayes Rule (KBR) and Correntropy-Induced Metric (CIM) into Adaptive Resonance Theory (ART) framework. KBR performs a covariance-free Bayesian computation which is able to maintain a fast and stable computation. CIM is a generalized similarity measurement which can maintain a high-noise reduction ability even in a high-dimensional space. In addition, a Growing Neural Gas (GNG)-based topology construction process is integrated into the ART framework to enhance its self-organizing ability. The simulation experiments with synthetic and real-world datasets show that the proposed model has an outstanding stable self-organizing ability for various test environments.

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http://dx.doi.org/10.1142/S0129065718500521DOI Listing

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