Smart TPOT-Based AutoML-Powered Android Malware Detection and classification

Monisha, M. Smart TPOT-Based AutoML-Powered Android Malware Detection and classification. IJRTE.

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Abstract

Systems and Networks can be seriously threatened by malware, often known as malicious software. The sophistication
of malware assaults is increasing, making it harder to identify and stop them, for several reasons, including the protection of
private data, data loss and alteration, system interruptions, monetary losses, and reputational harm. Therefore, malware

detection and prevention are essential. Various machine learning models such as Random Forest, Support Vector Machine, K-
NN, Extra Tree classifier, Gradient Boosting, and AdaBoost are applied for Android malware detection, as presented in this

research. A Python-based machine learning tool called Python Optimised ML Pipeline (TPOT) uses genetic programming to
maximize network throughput. To retrieve static information like permissions, network calls, API calls, and system traffic from
the malicious apps for Android dataset, we employ TPOT to construct models. Moreover, a comparison has been made with
traditional Machine learning classifiers and Automated ML for greater performance by reduction in computational time, training
speed, and efficiency. Subsequently, metrics such as precision, F1-score, Recall, and accuracy are used to evaluate the overall
performance of models. The analysis proved that Automated ML provides better outcomes of 99.7% accuracy with lesser
computational complexity and a reduction in training time.

Item Type: Article
Subjects: Electronics and Communication Engineering > Wireless Communication
Depositing User: Mr IR Admin
Date Deposited: 11 May 2026 06:29
Last Modified: 11 May 2026 08:57
URI: https://ir.vistas.ac.in/id/eprint/16093

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