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首页> 外文期刊>IEICE transactions on information and systems >Software Abnormal Behavior Detection Based on Function Semantic Tree
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Software Abnormal Behavior Detection Based on Function Semantic Tree

机译:基于功能语义树的软件异常行为检测

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摘要

Current software behavior models lack the ability to conduct semantic analysis. We propose a new model to detect abnormal behaviors based on a function semantic tree. First, a software behavior model in terms of state graph and software function is developed. Next, anomaly detection based on the model is conducted in two main steps: calculating deviation density of suspicious behaviors by comparison with state graph and detecting function sequence by function semantic rules. Deviation density can well detect control flow attacks by a deviation factor and a period division. In addition, with the help of semantic analysis, function semantic rules can accurately detect application layer attacks that fail in traditional approaches. Finally, a case study of RSS software illustrates how our approach works. Case study and a contrast experiment have shown that our model has strong expressivity and detection ability, which outperforms traditional behavior models.
机译:当前的软件行为模型缺乏进行语义分析的能力。我们提出了一种基于函数语义树的异常行为检测新模型。首先,开发了一种基于状态图和软件功能的软件行为模型。接下来,基于模型的异常检测分为两个主要步骤:通过与状态图比较来计算可疑行为的偏差密度,并通过功能语义规则检测功能序列。偏差密度可以通过偏差因子和周期划分很好地检测控制流攻击。此外,借助语义分析,功能语义规则可以准确检测在传统方法中失败的应用程序层攻击。最后,以RSS软件的案例研究说明了我们的方法是如何工作的。案例研究和对比实验表明,我们的模型具有较强的表现力和检测能力,优于传统的行为模型。

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