A New Geometry with Cross-Coupling of ART Networks

作者:B. Lungsi Sharma

摘要

This paper demonstrates a new geometrical arrangement of adaptive resonance theory based network. Using method of minimal anatomies a neural network was constructed in an attempt to compare patterns. The anatomy incorporates two sub-networks coupled by feedback signals and an additional motor layer whose outputs reflect relationship or non-relationship among the compared patterns. Simulation results illustrates the network behaviors as emergent properties. The network with unsupervised learning is capable of generating self-defining features.

论文关键词:Adaptive resonance theory, Embedding field theory, Minimal method anatomy, Unsupervised learning, Self-defining feature set, Set-membership theory

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论文官网地址:https://doi.org/10.1007/s11063-015-9481-y