Sequential anomaly detection in the presence of noise and limited feedback


Autoria(s): Raginsky, M; Willett, RM; Horn, C; Silva, J; Marcia, RF
Data(s)

23/07/2012

Resumo

This paper describes a methodology for detecting anomalies from sequentially observed and potentially noisy data. The proposed approach consists of two main elements: 1) filtering, or assigning a belief or likelihood to each successive measurement based upon our ability to predict it from previous noisy observations and 2) hedging, or flagging potential anomalies by comparing the current belief against a time-varying and data-adaptive threshold. The threshold is adjusted based on the available feedback from an end user. Our algorithms, which combine universal prediction with recent work on online convex programming, do not require computing posterior distributions given all current observations and involve simple primal-dual parameter updates. At the heart of the proposed approach lie exponential-family models which can be used in a wide variety of contexts and applications, and which yield methods that achieve sublinear per-round regret against both static and slowly varying product distributions with marginals drawn from the same exponential family. Moreover, the regret against static distributions coincides with the minimax value of the corresponding online strongly convex game. We also prove bounds on the number of mistakes made during the hedging step relative to the best offline choice of the threshold with access to all estimated beliefs and feedback signals. We validate the theory on synthetic data drawn from a time-varying distribution over binary vectors of high dimensionality, as well as on the Enron email dataset. © 1963-2012 IEEE.

Formato

5544 - 5562

application/pdf

Identificador

IEEE Transactions on Information Theory, 2012, 58 (8), pp. 5544 - 5562

0018-9448

http://hdl.handle.net/10161/1286

Idioma(s)

en_US

Relação

IEEE Transactions on Information Theory

ECE-2009-01

10.1109/TIT.2012.2201375

Tipo

Journal Article