Shadow zones of an artificial neuron

Keywords: artificial neuron, weights, fractals, fractal dimension, activation function, space of input signals, field of output signals

Abstract

The extremely widespread use of artificial neural networks in the diverse areas of application makes the study of their fundamental properties highly relevant. Such studies can be used to improve the properties of neural networks.

The key goal of the work: to determine the general properties of artificial neurons and detect the presence of zones where the field of output signals has a complex fractal structure in the space of all input signals.

Research methods: to explore the space of all input signals, a software that allows modelling the neuron's response to all possible input signals with a certain length in the given alphabet has been developed. With the help of the developed application the space of all input signals can be modulated and the field of output signals in this space is graphically determined. By using the capability of the software to change the scale of the input signal space, zones with a self-similar, fractal structure have been found.

Results: it has been established that when considering the overall arrangement of the neuron’s input signal space, specific areas – shadow zones – are present, which exhibit a complex fractal structure of output signal field. The impact of modifying theneuron’s weights and threshold on the presence and location of such zones has been established. The changes that follow an increase in the length of the input signals have been described. The fractal dimension of the structures within shadow zones has been determined.

Conclusions: the obtained general properties of neurons should significantly impact the properties of neural networks in the form of shadow zones in which the "response" of the network is extremely sensitive even to minute alterations in input signals. The presence of such zones is an extremely important factor that needs to be considered while developing neural networks.

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Author Biographies

Artem Novikov, Karazin Kharkiv National University, Svobody Sq 4, Kharkiv, Ukraine,61022

аспірант кафедри штучного інтелекту та програмного забезпечення

Vadym Smyrnov, Karazin Kharkiv National University, Svobody Sq 4, Kharkiv, Ukraine,61022

Master’s student, Department of Artificial Intelligence Systems

Volodymyr Yanovsky, “Institute for Single Crystals” of National Academy of Sciences, Nauky ave. 60, Kharkiv, Ukraine, 61001

Doctor of physical and mathematical sciences; Professor of Department of Artificial Intelligence Systems

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References

Published
2023-12-11
How to Cite
Novikov, A., Smyrnov, V., & Yanovsky, V. (2023). Shadow zones of an artificial neuron. Bulletin of V.N. Karazin Kharkiv National University, Series «Mathematical Modeling. Information Technology. Automated Control Systems», 60, 28-35. https://doi.org/10.26565/2304-6201-2023-60-03
Section
Статті