Using Dynamic Taint Approach for Malware Threat

Ping Wang, Wen-Hui Lin, Wun Jie Chao, K. Chao, Chi-Chun Lo
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引用次数: 2

Abstract

Most existing approaches focus on examining the values are dangerous for information flow within inter-suspicious modules of cloud applications (apps) in a host by using malware threat analysis, rather than the risk posed by suspicious apps were connected to the cloud computing server. Accordingly, this paper proposes a taint propagation analysis model incorporating a weighted spanning tree analysis scheme to track data with taint marking using several taint checking tools. In the proposed model, Android programs perform dynamic taint propagation to analyse the spread of and risks posed by suspicious apps were connected to the cloud computing server. In determining the risk of taint propagation, risk and defence capability are used for each taint path for assisting a defender in recognising the attack results against network threats caused by malware infection and estimate the losses of associated taint sources. Finally, a case of threat analysis of a typical cyber security attack is presented to demonstrate the proposed approach. Our approach verified the details of an attack sequence for malware infection by incorporating a finite state machine (FSM) to appropriately reflect the real situations at various configuration settings and safeguard deployment. The experimental results proved that the threat analysis model allows a defender to convert the spread of taint propagation to loss and practically estimate the risk of a specific threat by using behavioural analysis with real malware infection.
利用动态染色方法检测恶意软件威胁
大多数现有方法侧重于通过恶意软件威胁分析来检查主机中云应用程序(应用程序)内部可疑模块内的信息流的危险值,而不是可疑应用程序连接到云计算服务器所带来的风险。因此,本文提出了一种包含加权生成树分析方案的污染传播分析模型,利用多种污染检查工具跟踪带有污染标记的数据。在提出的模型中,Android程序进行动态污点传播,分析可疑应用程序的传播情况,并将其风险连接到云计算服务器。在确定污染传播的风险时,风险和防御能力用于每个污染路径,以帮助防御者识别由恶意软件感染引起的网络威胁的攻击结果,并估计相关污染源的损失。最后,以典型网络安全攻击的威胁分析为例,对所提出的方法进行了验证。我们的方法通过结合有限状态机(FSM)来适当地反映各种配置设置和保护部署下的真实情况,从而验证了恶意软件感染攻击序列的细节。实验结果证明,威胁分析模型允许防御者将污染传播的传播转化为损失,并通过使用真实恶意软件感染的行为分析来实际估计特定威胁的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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