Scan $B$-Statistic for Kernel Change-Point Detection
July 05, 2015 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Shuang Li, Yao Xie, Hanjun Dai, Le Song
arXiv ID
1507.01279
Category
cs.LG: Machine Learning
Cross-listed
math.ST,
stat.ML
Citations
115
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Detecting the emergence of an abrupt change-point is a classic problem in statistics and machine learning. Kernel-based nonparametric statistics have been used for this task which enjoy fewer assumptions on the distributions than the parametric approach and can handle high-dimensional data. In this paper we focus on the scenario when the amount of background data is large, and propose two related computationally efficient kernel-based statistics for change-point detection, which are inspired by the recently developed $B$-statistics. A novel theoretical result of the paper is the characterization of the tail probability of these statistics using the change-of-measure technique, which focuses on characterizing the tail of the detection statistics rather than obtaining its asymptotic distribution under the null distribution. Such approximations are crucial to control the false alarm rate, which corresponds to the significance level in offline change-point detection and the average-run-length in online change-point detection. Our approximations are shown to be highly accurate. Thus, they provide a convenient way to find detection thresholds for both offline and online cases without the need to resort to the more expensive simulations or bootstrapping. We show that our methods perform well on both synthetic data and real data.
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