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Optimal Sub-sampling to Boost Power of Kernel Sequential Change-point Detection (2210.15060v2)
Published 26 Oct 2022 in stat.ME and stat.ML
Abstract: We present a novel scheme to boost detection power for kernel maximum mean discrepancy based sequential change-point detection procedures. Our proposed scheme features an optimal sub-sampling of the history data before the detection procedure, in order to tackle the power loss incurred by the random sub-sample from the enormous history data. We apply our proposed scheme to both Scan $B$ and Kernel Cumulative Sum (CUSUM) procedures, and improved performance is observed from extensive numerical experiments.
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