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Indian Journal of Modern Research and Reviews, 2026; 4(1):128-133

A Review of Machine Learning Algorithms for Malware Detection

Authors: Shinda Singh; Shalu Gupta; Jaswinder Brar;

1. Student, Department of Computer Applications, Guru Kashi University, Talwandi Sabo, Punjab, India

2. Associate Professor, Department of Computer Applications, Guru Kashi University, Talwandi Sabo, Punjab, India

3. Assistant Professor, Department of Computer Applications, Guru Kashi University, Talwandi Sabo, Punjab, India

Paper Type: Research Paper
Article Information
Received: 2025-11-20   |   Accepted: 2025-12-25   |   Published: 2026-01-20
Abstract

This study centres on dynamic malware detection, recognizing that malicious software evolves continuously and demands more adaptive security approaches. With new malware emerging almost every day and exploiting weaknesses across the Internet, traditional manual and heuristic-based analysis has become insufficient. To address this growing challenge, this research employs automated, behaviour-based detection supported by machine learning techniques. In this approach, malware samples are executed within a controlled environment, their behaviours are monitored, and detailed reports are generated. These reports are then transformed into sparse vector representations, which serve as input for various machine learning models. The classifiers applied in this study include kNN, DT, RF, AdaBoost, SGD, Extra Trees, and Gaussian NB. An evaluation of the experimental results shows that RF, SGD, Extra Trees, and Gaussian NB all reached 100% accuracy on the test set, along with perfect precision (1.00), recall (1.00), and f1-scores (1.00). These findings suggest that a proof-of-concept system combining autonomous behaviour analysis with machine learning can detect malware both effectively and efficiently.

Keywords

malware; cyberattacks; IoT; malicious threats; machine learning classifiers; RF; DT; cyber security; suspicious activity; SGD; extra trees; Gaussian NB

How to Cite

. A Review of Machine Learning Algorithms for Malware Detection. Indian Journal of Modern Research and Reviews. 2026; 4(1):128-133

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