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arxiv: 1701.06952 · v2 · pith:SK33G4ZEnew · submitted 2017-01-24 · 📊 stat.ME

Robust Sequential Change-Point Detection by Convex Optimization

classification 📊 stat.ME
keywords robustdistributionsprocedureschange-pointconvexdetectionestablishfinding
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We address the computational challenge of finding the robust sequential change-point detection procedures when the pre- and post-change distributions are not completely specified. Earlier works [veeravalli 1994] and [Unnikrishnan 2011] establish the general conditions for robust procedures which include finding a pair of least favorable distributions (LFDs). However, in the multi-dimensional setting, it is hard to find such LFDs computationally. We present a method based on convex optimization that addresses this issue when the distributions are Gaussian with unknown parameters from pre-specified uncertainty sets. We also establish theoretical properties of our robust procedures, and numerical examples demonstrate their good performance.

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