这是过度杀戮吗?恶意软件检测器中的特征空间概念漂移分析

Zhi Chen, Zhenning Zhang, Zeliang Kan, Limin Yang, Jacopo Cortellazzi, Feargus Pendlebury, Fabio Pierazzi, L. Cavallaro, Gang Wang
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引用次数: 2

摘要

概念漂移是基于机器学习的恶意软件检测器在实际部署时面临的主要挑战。虽然现有的工作已经研究了检测概念漂移的方法,但对于漂移背后的主要原因尚未得到很好的理解。在本文中,我们设计了实验来实证分析特征空间漂移(新样本引入的新特征)的影响,并将其与数据空间漂移(数据分布在现有特征上的移动)进行比较。令人惊讶的是,我们发现数据空间漂移是导致模型随时间退化的主要因素,而特征空间漂移几乎没有影响。在Android和PE恶意软件检测器中,使用不同的特征类型和特征工程方法,在不同的设置中都可以观察到这一点。我们用最近基于在线学习的恶意软件检测器进一步验证了这一观察结果,该检测器会逐步更新特征空间。我们的结果表明了在不频繁更新特征的情况下处理概念漂移的可能性,并进一步讨论了未来研究的开放性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Is It Overkill? Analyzing Feature-Space Concept Drift in Malware Detectors
Concept drift is a major challenge faced by machine learning-based malware detectors when deployed in practice. While existing works have investigated methods to detect concept drift, it is not yet well understood regarding the main causes behind the drift. In this paper, we design experiments to empirically analyze the impact of feature-space drift (new features introduced by new samples) and compare it with data-space drift (data distribution shift over existing features). Surprisingly, we find that data-space drift is the dominating contributor to the model degradation over time while feature-space drift has little to no impact. This is consistently observed over both Android and PE malware detectors, with different feature types and feature engineering methods, across different settings. We further validate this observation with recent online learning based malware detectors that incrementally update the feature space. Our result indicates the possibility of handling concept drift without frequent feature updating, and we further discuss the open questions for future research.
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