Malware Classification Using XGBoost and Genetic Algorithm for Hyperparameter Tuning

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Date

2024

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Volume Title

Publisher

Institute of Electrical and Electronics Engineers Inc.

Abstract

All human activities are being moved into the virtual world due to technological advancements. Since so much of our data is stored on computers and networks, the frequency of cyberattacks has sharply increased. Understanding the many types of malware, their danger level, defense strategies, and potential methods of infecting computers and other devices requires the ability to identify and classify them. In this research, we propose a malware categorization model. Our proposed model is based on XGBoost and uses a Genetic Algorithm for hyperparameter tuning. The system achieved high accuracy with the help of two different malware datasets used for testing and training: Malevis and Malimg. © 2024 IEEE.

Description

Keywords

genetic algorithm, hyperparameter tuning, Malware classification, malware detection, malware variants, XGBoost

Citation

8th IEEE International Conference on Computational System and Information Technology for Sustainable Solutions, CSITSS 2024, 2024, Vol., , p. -

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