Title of article :
Scalable anomaly detection in large homogeneous populations
Author/Authors :
Ohlsson، نويسنده , , Henrik and Chen، نويسنده , , Tianshi and Pakazad، نويسنده , , Sina Khoshfetrat and Ljung، نويسنده , , Lennart and Shankar Sastry، نويسنده , , S.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Abstract :
Anomaly detection in large populations is a challenging but highly relevant problem. It is essentially a multi-hypothesis problem, with a hypothesis for every division of the systems into normal and anomalous systems. The number of hypothesis grows rapidly with the number of systems and approximate solutions become a necessity for any problem of practical interest. In this paper we take an optimization approach to this multi-hypothesis problem. It is first shown to be equivalent to a non-convex combinatorial optimization problem and then is relaxed to a convex optimization problem that can be solved distributively on the systems and that stays computationally tractable as the number of systems increase. An interesting property of the proposed method is that it can under certain conditions be shown to give exactly the same result as the combinatorial multi-hypothesis problem and the relaxation is hence tight.
Keywords :
anomaly detection , outlier detection , Multi-hypothesis testing , System identification , Distributed optimization
Journal title :
Automatica
Journal title :
Automatica