STLGMay 19, 2017

Nearly second-order asymptotic optimality of sequential change-point detection with one-sample updates

arXiv:1705.06995v4
Originality Highly original
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This addresses a fundamental problem in statistics and machine learning for detecting distribution changes with unknown parameters, offering a versatile method for complex situations where traditional estimators fail.

The paper tackles sequential change-point detection with unknown post-change parameters by using sequential likelihood ratios with online convex optimization estimators, showing that this approach is nearly second-order asymptotically optimal, meaning the false alarm rate upper bound meets the lower bound asymptotically up to a log-log factor.

Sequential change-point detection when the distribution parameters are unknown is a fundamental problem in statistics and machine learning. When the post-change parameters are unknown, we consider a set of detection procedures based on sequential likelihood ratios with non-anticipating estimators constructed using online convex optimization algorithms such as online mirror descent, which provides a more versatile approach to tackle complex situations where recursive maximum likelihood estimators cannot be found. When the underlying distributions belong to a exponential family and the estimators satisfy the logarithm regret property, we show that this approach is nearly second-order asymptotically optimal. This means that the upper bound for the false alarm rate of the algorithm (measured by the average-run-length) meets the lower bound asymptotically up to a log-log factor when the threshold tends to infinity. Our proof is achieved by making a connection between sequential change-point and online convex optimization and leveraging the logarithmic regret bound property of online mirror descent algorithm. Numerical and real data examples validate our theory.

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