2D-Neo-Fuzzy Neuron and Its Adaptive Learning

Yevgeniy Bodyanskiy, Olena Vynokurova, Valentyna Volkova, Olena Boiko

Abstract


In the paper 2D-neo-fuzzy neuron is presented. It is a generalization of the traditional NFN for data in matrix form. 2D-NFN is based on the matrix adaptive bilinear model with an additional fuzzification layer. It reduces the number of adjustable synaptic weights in comparison with traditional systems. For its learning, optimized adaptive procedures with filtering and tracking properties are proposed. 2D-NFN can be effectively used for image processing, data reduction, and restoration of non-stationary signals, presented as 2D-sequences.

Keywords:

2D network; data mining; hybrid systems; neo-fuzzy neuron

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References


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DOI: 10.7250/itms-2018-0003

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