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Application of Evolutionary Algorithms to Enhance the Efficiency of Neural Networks and Machine Learning Algorithms

Mekhriddin NurmamatovSamarkand state university,Department of Artificial intelligence and Information systems,Samarkand,UzbekistanShokhrukh SariyevSamarkand state university,Department of Artificial intelligence and Information systems,Samarkand,UzbekistanBunyod EshonkulovHead of the Department of Affairs of the Jizzakh branch of the National University of Uzbekistan named after M. Ulugbek,Jizzakh,Uzbekistan
2025en
ABI

Abstract

This study examines approaches to hyperparameter optimization in machine learning and deep learning systems using genetic algorithms. Today, the success of neural networks and machine learning algorithms largely depends on the correct tuning of their hyper parameters. Traditional approaches, such as search networks and Bayesian optimization, can sometimes be inefficient for high-dimensional and complex models. This study analyzes the possibility of improving machine learning results by selecting hyper parameters based on the principles of natural evolution of genetic algorithms. The proposed methods are tested on practical problems related to neural networks, and the results of the research on performance indicators reveal opportunities for improving the accuracy and efficiency of predictions in machine learning and neural networks.

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