cs.AI updates on arXiv.org 07月31日 12:48
Empirical Evaluation of Concept Drift in ML-Based Android Malware Detection
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本文探讨了概念漂移对Android恶意软件检测模型的影响,分析了不同特征类型和算法在应对恶意软件动态变化时的表现,并指出大型语言模型在少量样本学习方面的潜力。

arXiv:2507.22772v1 Announce Type: cross Abstract: Despite outstanding results, machine learning-based Android malware detection models struggle with concept drift, where rapidly evolving malware characteristics degrade model effectiveness. This study examines the impact of concept drift on Android malware detection, evaluating two datasets and nine machine learning and deep learning algorithms, as well as Large Language Models (LLMs). Various feature types--static, dynamic, hybrid, semantic, and image-based--were considered. The results showed that concept drift is widespread and significantly affects model performance. Factors influencing the drift include feature types, data environments, and detection methods. Balancing algorithms helped with class imbalance but did not fully address concept drift, which primarily stems from the dynamic nature of the malware landscape. No strong link was found between the type of algorithm used and concept drift, the impact was relatively minor compared to other variables since hyperparameters were not fine-tuned, and the default algorithm configurations were used. While LLMs using few-shot learning demonstrated promising detection performance, they did not fully mitigate concept drift, highlighting the need for further investigation.

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Android恶意软件 概念漂移 机器学习 深度学习
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