基于静态分析和数据挖掘方法的病毒防御模型

Tzu-Yen Wang, C. Wu, Chu-Cheng Hsieh
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引用次数: 35

摘要

针对传统杀毒方法防范能力不足的问题,本文提出了一种基于行为的未知病毒防范模型。我们首先通过观察可执行文件对动态链接库和应用程序编程接口的使用来定义其行为。然后,利用信息增益和支持向量机过滤冗余行为属性,选择信息特征训练病毒分类器。我们的模型的性能通过包含1,758个良性可执行文件和846个病毒的数据集进行评估。实验结果令人满意,检测已知病毒和未见过病毒的总体准确率分别为99%和96.66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Virus Prevention Model Based on Static Analysis and Data Mining Methods
Owing to the lack of prevention ability of traditional anti-virus methods, a behavior-based virus prevention model for detecting unknown virus is proposed in this study. We first defined the behaviors of an executable by observing its usage of dynamically linked libraries and Application Programming Interfaces. Then, information gain and support vector machines were applied to filter out the redundant behavior attributes and select informative feature for training a virus classifier. The performance of our model was evaluated by a dataset contains 1,758 benign executables and 846 viruses. The experiment results are promising, and the overall accuracies are 99% and 96.66% for detecting the known viruses and the previously unseen viruses respectively.
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