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Poisson-Based Anomaly Detection for Identifying Malicious User Behaviour

机译:基于泊松的异常检测可识别恶意用户行为

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Nowadays, malicious user behaviour that does not trigger access violation or alert of data leak is difficult to be detected. Using the stolen login credentials the intruder doing espionage will first try to stay undetected: silently collect data from the company network and use only resources he is authorised to access. To deal with such cases, a Poisson-based anomaly detection algorithm is proposed in this paper. Two extra measures make it possible to achieve high detection rates and meanwhile reduce number of false positive alerts: (1) checking probability first for the group, and then for single users and (2) selecting threshold automatically. To prove the proposed approach, we developed a special simulation testbed that emulates user behaviour in the virtual network environment. The proof-of-concept implementation has been integrated into our prototype of a SIEM system - Real-time Event Analysis and Monitoring System, where the emulated Active Directory logs from Microsoft Windows domain are extracted and normalised into Object Log Format for further processing and anomaly detection. The experimental results show that our algorithm was able to detect all events related to malicious activity and produced zero false positive results. Forethought as the module for our self-developed SIEM system based on the SAP HANA in-memory database, our solution is capable of processing high volumes of data and shows high efficiency on experimental dataset.
机译:如今,很难检测到不会触发访问冲突或数据泄漏警报的恶意用户行为。使用被盗的登录凭据,进行间谍活动的入侵者将首先尝试保持未被检测到的状态:静默地从公司网络收集数据,并且仅使用其有权访问的资源。针对这种情况,提出了一种基于泊松的异常检测算法。两种额外的措施可以实现较高的检测率,同时减少误报的次数:(1)首先检查组的概率,然后再检查单个用户的概率,以及(2)自动选择阈值。为了证明所提出的方法,我们开发了一个特殊的模拟测试平台,可以模拟虚拟网络环境中的用户行为。概念验证的实现已集成到我们的SIEM系统原型-实时事件分析和监视系统中,该系统从Microsoft Windows域提取模拟的Active Directory日志并将其标准化为对象日志格式,以进行进一步处理和异常处理检测。实验结果表明,我们的算法能够检测到与恶意活动有关的所有事件,并产生零假阳性结果。作为我们基于SAP HANA内存数据库的自行开发的SIEM系统的模块,我们的解决方案可以预见到,我们的解决方案能够处理大量数据,并在实验数据集上显示出高效率。

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