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Linear-Complexity Exponentially-Consistent Tests for Universal Outlying Sequence Detection

21 January 2017
Yuheng Bu
Shaofeng Zou
Venugopal V. Veeravalli
ArXiv (abs)PDFHTML
Abstract

The problem of universal outlying sequence detection is studied, where the goal is to detect outlying sequences among MMM sequences of samples. A sequence is considered as outlying if the observations therein are generated by a distribution different from those generating the observations in the majority of the sequences. In the universal setting, we are interested in identifying all the outlying sequences without knowing the underlying generating distributions. In this paper, a class of tests based on distribution clustering is proposed. These tests are shown to be exponentially consistent with linear time complexity in MMM. Numerical results demonstrate that our clustering-based tests achieve similar performance to existing tests, while being considerably more computationally efficient.

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