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Methods for Constructing Artificial Neural Networks for Data Classification

https://doi.org/10.35596/2522-9613-2022-28-1-20-26

Abstract

The features of the organization of distance learning of students in a higher educational institution, as well as the information and educational technologies necessary for this, are considered. A system of automatic assessment of students’ knowledge is proposed. It is based on a model in the form of an artificial neural network. The features of such a model are given. The two implemented methods for constructing artificial neural networks have been used in the software module for testing students’ knowledge. The choice of the type of network, its structure, and parameters has been substantiated. The first method is related to the construction of an artificial neural network in the manual mode. An algorithm is presented that reflects the iterative process of its training. In the second case, the network is built automatically by applying a genetic algorithm. At the beginning of the work, a set of randomly generated initial data arrives at the input of the algorithm. In the course of its work, the genetic algorithm determines the architecture and parameters of the neural network, which ensure the successful solution of the assigned applied problem. Trained networks are used to classify data. Both networks showed acceptable classification accuracy of the results obtained in the course of the students’ knowledge testing.

About the Author

L. V. Serebryanaya
BIP – University of Law and Social Information Technologies; Belarusian State University of Informatics and Radioelectronics
Belarus

Serebryanaya Liya Valentinovna, Head of the Department of Information Technologies and Mathematics «BIP – University of Law and Social Information Technologies», Cand. of Sci., Associate Professor; Associate Professor at the Information Technologies Software Department of the Belarusian State University of Informatics and Radioelectronics

220013, Minsk, Korolya st., 3, tel. +375-17-375-01-56

220013, Minsk, P. Brovka st., 6, tel. +375-17-293-84-93



References

1. Rutkovskaya D., Pilinsky M., Rutkovsky L. [Neural networks, genetic algorithms and fuzzy systems]. M.:Hot Line-Telecom, 2007. (In Russ.)

2. Nikolenko S.I., Kadurin A.A., Arkhangel’skaya Ye.O. [Deep Learning]. St. Petersburg: Piter, 2018. (In Russ.)

3. Reza B.Z., Ramsundar B. [TensorFlow for deep learning]. St. Petersburg: BHV; 2019. (In Russ.)

4. Serebryanaya L.V., Tretyakov F.I. [Methods and algorithms for decision making: study guide for the course «Methods and algorithms for decision making» for students of the specialty «information technology software»]. Minsk: BSUIR; 2016. (In Russ.)

5. [Method of back propagation of errors]. Available at: https://www.wikiwand.com/ru/Method_back_propagation_bugs. Accessed: 08.01.2022. (In Russ.)

6. Serebryanaya L.V., Bochkarev K.Yu., Popitich A.Ya. [Model of automatic classification and localization of images]. Tsifrovaya transformatsiya = Digital transformation. 2019;1(6):43-48. https://doi.org/10.38086/2522-9613-2019-1-43-48 (In Russ.)

7. [Genetic algorithm]. Available at: http://www.machinelearning.ru/wiki/index.php?title=Genetic_algorithm. Accessed: 08.01.2022. (In Russ.)


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For citations:


Serebryanaya L.V. Methods for Constructing Artificial Neural Networks for Data Classification. Digital Transformation. 2022;28(1):20-26. (In Russ.) https://doi.org/10.35596/2522-9613-2022-28-1-20-26

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ISSN 2522-9613 (Print)
ISSN 2524-2822 (Online)