基于贝叶斯网络的网络级行为恶意软件分析模型

M. Yusof, A. Zin
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引用次数: 0

摘要

基于签名的分析已不足以解决恶意软件攻击的多态性和隐蔽性。因此,行为或异常分析将为解决方案提供更动态的方法。然而,最近的研究表明,目前网络层面的行为分析方法存在一些问题,并将其归结为其共同的特征,即参数减少θ和缺乏先验信息p(θ)。因此,本研究旨在确定特征选择和分布密度模型,以选择优化的特征,然后设计基于贝叶斯网络的预测分析模型,以提高分析预测。最后,目的是使用来自马来西亚医疗保健提供商的生产流量的标准和真实数据集,针对主题专家模型、SVM、k-NN和Lease Squared评估模型的检测、准确性和虚警率。结果表明,所提出的模型始终优于其他模型。
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Network-Level Behavioral Malware Analysis Model based on Bayesian Network
Signature-based analysis is no longer sufficient to solve polymorphic and stealth nature of malware attacks. Therefore, a behavioral or anomalous analysis will provide a more dynamic approach for the solution. However, recent studies have shown that current behavioral analysis methods at network-level have several issues and been categorized into its common characteristics which are reduced parameters, θ and lack of prior information, p(θ). Therefore, this study aims to determine Feature Selection and Distribution Density model to select optimized features, then to design Predictive Analytics Model based on Bayesian Network to improve the analysis prediction. Finally, the aim is to evaluate detection, accuracy and false alarm rate of the model against the subject matter expert model, SVM, k-NN and Lease Squared using standard and ground-truth dataset of production traffic from the healthcare provider in Malaysia. Results have shown that the proposed model consistently outperformed other models.
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