基于模糊推理系统的数据盗窃检测

P. Patel, U. Singh
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引用次数: 6

摘要

数据窃取检测的挑战之一是难以区分拷贝操作和其他类型的访问操作。该领域的现有工作主要集中在文件系统行为的随机模型上,以识别复制所特有的MAC时间戳中的紧急模式。这种方法会产生很多误报,因为由于复制而出现的模式类似于其他访问操作,如在文件夹中搜索文件、压缩文件夹和通过防病毒软件扫描文件夹。本文提出了一种技术,可以用来区分复制操作与其他类型的操作,使法医分析可以集中精力在更相关的人工制品。本文描述了一种基于模糊推理系统的技术,该技术对随机取证方法生成的每个聚类给出一个置信度。实验结果表明,随机取证方法产生的假阳性可以使用我们的技术的聚类置信度进行过滤。
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Detection of data theft using fuzzy inference system
One of the challenges in detection of data theft is the difficulty to distinguish copy operation from other type of access operations. Existing work in this area focuses on the stochastic model of filesystem behaviour to identify emergent patterns in MAC timestamps unique to copying. Such an approach produces lot of false positives because of the fact that patterns emerging due to copying are similar to other access operations like searching a file in folder, compressing a folder and scanning a folder by antivirus software. This paper proposes a technique that can be used to distinguish copy operation from other type of operations so that forensic analyst can concentrate on more relevant artefacts. The paper describes fuzzy inference system based technique that gives a confidence value to each cluster generated by stochastic forensic approach. Experimental results have shown that the false positives that are generated by the stochastic forensic approach can be filtered using the cluster confidence of our technique.
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