Extraction of Significant Features by Fixed-Weight Layer of Processing Elements for the Development of an Efficient Spiking Neural Network Classifier

Author:

Sboev Alexander12ORCID,Rybka Roman13ORCID,Kunitsyn Dmitry12ORCID,Serenko Alexey1ORCID,Ilyin Vyacheslav145ORCID,Putrolaynen Vadim6ORCID

Affiliation:

1. Kurchatov’s Complex of NBICS-Technologies, National Research Center “Kurchatov Institute”, Academic Kurchatov sq., 123182 Moscow, Russia

2. Institute for Laser and Plasma Technologies, National Research Nuclear University “MEPhI”, 115409 Moscow, Russia

3. Department of Automated Systems of Organizational Management, Russian Technological University “MIREA”, Vernadsky av., 119296 Moscow, Russia

4. National Center for Cognitive Research, ITMO University, 197101 Saint Petersburg, Russia

5. Department of NBIC-Technologies, Moscow Institute of Physics and Technology, 141701 Dolgoprudny, Russia

6. Institute of Physics and Technology, Petrozavodsk State University, 185910 Petrozavodsk, Russia

Abstract

In this paper, we demonstrate that fixed-weight layers generated from random distribution or logistic functions can effectively extract significant features from input data, resulting in high accuracy on a variety of tasks, including Fisher’s Iris, Wisconsin Breast Cancer, and MNIST datasets. We have observed that logistic functions yield high accuracy with less dispersion in results. We have also assessed the precision of our approach under conditions of minimizing the number of spikes generated in the network. It is practically useful for reducing energy consumption in spiking neural networks. Our findings reveal that the proposed method demonstrates the highest accuracy on Fisher’s iris and MNIST datasets with decoding using logistic regression. Furthermore, they surpass the accuracy of the conventional (non-spiking) approach using only logistic regression in the case of Wisconsin Breast Cancer. We have also investigated the impact of non-stochastic spike generation on accuracy.

Funder

Russian Science Foundation

Publisher

MDPI AG

Subject

Artificial Intelligence,Computer Science Applications,Information Systems,Management Information Systems

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