FENOC:一个集成的一类恶意软件检测学习框架

Jiachen Liu, Jianfeng Song, Qiguang Miao, Ying Cao
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引用次数: 10

摘要

如今,基于机器学习的方法是最流行的恶意软件检测方法之一。然而,以往的工作大多是使用单一类型的特征,动态的或静态的,并以此来构建一个二元分类模型。这些方法描述恶意软件特征行为的能力有限,并且存在良性样本采样不足和训练数据极不平衡的问题。本文提出了一种用于恶意软件检测的集成单类学习框架FENOC。FENOC利用来自多个语义层的混合特征来确保对被分析程序的全面洞察,并通过一种新的单类学习算法CosTOC (Cost-sensitive Twin One-class Classifier)构建检测模型,该算法使用一对单类分类器分别描述恶意程序类和良性程序类。CosTOC在处理恶意软件检测问题时更灵活,鲁棒性更强,具有不平衡性和低误报率的特点。同时,采用随机子空间集成方法增强了CosTOC的泛化能力。实验结果表明,在检测未知恶意软件时,FENOC具有较高的检测率和较低的误报率,特别是在训练数据集不平衡的情况下。
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FENOC: An Ensemble One-Class Learning Framework for Malware Detection
Nowadays, machine learning based methods are among the most popular ones for malware detection. However, most of the previous works use a single type of features, dynamic or static, and take them to build a binary classification model. These methods have limited ability to depict characteristic malware behaviors and suffer from insufficiently sampled benign samples and extremely imbalanced training dataset. In this paper, we present FENOC, an ensemble one-class learning framework for malware detection. FENOC uses hybrid features from multiple semantic layers to ensure comprehensive insights of analyzed programs, and constructs detection model via CosTOC (Cost-sensitive Twin One-class Classifier), a novel one-class learning algorithm, which uses a pair of one-class classifiers to describe malware class and benign program class respectively. CosTOC is more flexible and robust when handling malware detection problems, which is imbalanced and need low false positive rate. Meanwhile, a random subspace ensemble method is used to enhance the generalization ability of CosTOC. Experimental results show that to detect unknown malware, FENOC has a higher detection rate and a lower false positive rate, especially in the situations that training datasets are imbalanced.
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