UTrack

Yue Li, Zhenyu Wu, Haining Wang, Kun Sun, Zhichun Li, Kangkook Jee, J. Rhee, Haifeng Chen
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UTrack
Tracking user activities inside an enterprise network has been a fundamental building block for today's security infrastructure, as it provides accurate user profiling and helps security auditors to make informed decisions based on the derived insights from the abundant log data. Towards more accurate user tracking, we propose a novel paradigm named UTrack by leveraging rich system-level audit logs. From a holistic perspective, we bridge the semantic gap between user accounts and real users, tracking a real user's activities across different user accounts and different network hosts based on causal relationship among processes. To achieve better scalability and a more salient view, we apply a variety of data reduction and compression techniques to process the large amount of data. %and significantly reduce the data volume. We implement UTrack in a real enterprise environment consisting of 111 hosts, which generate more than 4 billion events in total during the experiment time of one month. Through our evaluation, we demonstrate that UTrack is able to accurately identify the events that are relevant to user activities. Our data reduction and compression modules largely reduce the output data size, producing a both accurate and salient overview on a user session profile.
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