Neural Networks Optimization: Methods and Their Comparison Based off Text Intellectual Analysis

Мұқаба

Дәйексөз келтіру

Толық мәтін

Аннотация

The research resulted in the development of software that implements various algorithms of neural networks optimization, which allowed to carry out their comparative analysis in terms of optimization quality. The article takes a detailed look at artificial neural networks and methods of their optimization: quantization, overcutting, distillation, Tucker’s dissolution. Algorithms and optimization tools of neural networks were explained, as well as comparative analysis of different methods was conducted with their advantages and disadvantages listed. Calculation values were given as well as recommendations on how to execute each method. Optimization is studied by text classification performance: peculiarities were removed, models were chosen and taught, parameters were adjusted. The set task was completed with the use of the following technologies: Python programming language, Pytorch framework and Jupyter Notebook developing environment. The results that were acquired can be used to reduce the demand on computing power while preserving the same level of detection and classification abilities.

Авторлар туралы

Julia Torkunova

Kazan State Power Engineering University; Sochi State University

Хат алмасуға жауапты Автор.
Email: torkynova@mail.ru
ORCID iD: 0000-0001-7642-6663
SPIN-код: 7422-4238

Professor of the Department of Information Technologies and Intelligent Systems, Doctor of Pedagogical Sciences

 

Ресей, 51, Krasnoselskaya Str., Kazan, Republic of Tatarstan, 420066, Russian Federation; 94, Plastunskaya Str., Sochi, Krasnodar region, 354000, Russian Federation

Danila Milovanov

Kazan State Power Engineering University

Email: studydmk@gmail.com

Magister

 

Ресей, 51, Krasnoselskaya Str., Kazan, Republic of Tatarstan, 420066, Russian Federation

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© Torkunova J.V., Milovanov D.V., 2023

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