@inproceedings{a692cdcf53fe4c32865c772e125de450,
title = "AI-Driven Smishing Detection in Android Devices Using TinyBERT and Aquila Optimization",
abstract = "The increasing prevalence of smishing (SMS phishing) attacks on mobile devices poses significant security risks, particularly for Android users. Traditional spam detection techniques often fail to accurately distinguish between legitimate and malicious messages due to the complexity and contextual nature of smishing. In this paper, we propose an AI-driven smishing detection approach using TinyBERT for feature extraction and Aquila Optimization (AO) to optimize a deep learning model. With AO-tuned hyperparameters, the proposed model achieved an accuracy of 96.81\%, outperforming standard models like GRU, LSTM, and SVM. Our approach offers a robust, efficient solution for Android smishing detection.",
keywords = "Android Security, Aquila Optimization, SMS Phishing, Smishing Detection, TinyBERT",
author = "Akshat Gaurav and Gupta, \{Brij B.\} and Chui, \{Kwok Tai\}",
note = "Publisher Copyright: Copyright 2025 Global IT Research Institute (GIRI). All rights reserved.; 27th International Conference on Advanced Communications Technology, ICACT 2025 ; Conference date: 16-02-2025 Through 19-02-2025",
year = "2025",
doi = "10.23919/ICACT63878.2025.10936701",
language = "English",
series = "International Conference on Advanced Communication Technology, ICACT",
pages = "99--105",
booktitle = "27th International Conference on Advanced Communications Technology",
}