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Jul, 2024
检测新的混淆恶意软件变体:一种轻量且可解释的机器学习方法
Detecting new obfuscated malware variants: A lightweight and interpretable machine learning approach
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Oladipo A. Madamidola, Felix Ngobigha, Adnane Ez-zizi
TL;DR
通过仅训练模型于单个或几个精选的恶意软件子类型并应用于检测未知子类型,本研究首次证明了通过独家训练的模型的准确性、轻量级和可解释性,为检测混淆恶意软件的可行性进行了创新的方法。
Abstract
machine learning
has been successfully applied in developing
malware detection
systems, with a primary focus on accuracy, and increasing attention to reducing computational overhead and improving model
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