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Enhancing Malware Detection Through Machine Learning Using XAI with SHAP Framework

conference contribution
posted on 2025-05-07, 11:05 authored by Nihala Basheer, Bernardi Pranggono, Shareeful Islam, Spyridon Papastergiou, Haralambos Mouratidis
Malware represents a significant cyber threat that can potentially disrupt any activities within an organization. There is a need to devise effective proactive methods for malware detection, thereby minimizing the associated risks. However, this task is challenging due to the ever-growing volume of malware data and the continuously evolving techniques employed by malicious actors. In this context, machine learning models offer a promising approach to identify key malware features and facilitate accurate detection. Machine learning has proven to be effective in detecting malware and has recently gained widespread attention from both the academic and research sectors. Despite their effectiveness, current research on machine learning (ML) models for malware detection often lacks necessary explanations for the selection of key features. This opacity of ML models can complicate the understanding of the outputs, errors, and decision-making processes. To address this challenge, this research uses Explainable AI (XAI), particularly the SHAP framework, to enhance transparency and interpretability. By providing extensive insights into how each feature contributes to the model’s conclusions, the approach further improves the model’s accountability. An experiment was conducted to demonstrate the applicability of the proposed method, beginning with the training of the chosen machine learning models, including Random Forest, Adaboost, Support Vector Machine and Artificial Neural Network, for detecting malware, and concluding with the explanation of the decision-making process using XAI techniques. The results showed high accuracy in malware detection, along with comprehensive explanations of the feature contributions, which justifies the outputs produced by the models.

History

Refereed

  • Yes

Volume

711

Page range

316-329

ISSN

1868-4238

Publisher

Springer Nature Switzerland

ISBN

9783031632105

Conference proceeding

IFIP Advances in Information and Communication Technology

Name of event

20th International Conference on Artificial Intelligence Applications and Innovations (AIAI)

Location

GREECE, Corfu

Event start date

2024-06-27

Event finish date

2024-06-30

Editors

Maglogiannis I, Iliadis L, Macintyre J, Avlonitis M, Papaleonidas A

File version

  • Accepted version

Affiliated with

  • School of Computing and Information Science Outputs