Quickest Change Detection with Post-Change Density Estimation

Yuchen Liang, Venugopal V. Veeravalli
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Abstract

The problem of quickest change detection in a sequence of independent observations is considered. The pre-change distribution is assumed to be known, while the post-change distribution is unknown. Two tests based on post-change density estimation are developed for this problem, the window-limited non-parametric generalized likelihood ratio (NGLR) CuSum test and the non-parametric window-limited adaptive (NWLA) CuSum test. Both tests do not assume any knowledge of the post-change distribution, except that the post-change density satisfies certain smoothness conditions that allows for efficient non-parametric estimation. Also, they do not require any pre-collected post-change training samples. Under certain convergence conditions on the density estimator, it is shown that both tests are first-order asymptotically optimal, as the false alarm rate goes to zero. The analysis is validated through numerical results, where both tests are compared with baseline tests that have distributional knowledge.
最快的变化检测与后变化密度估计
研究了独立观测序列中最快速的变化检测问题。假设变更前的分布是已知的,而变更后的分布是未知的。针对这一问题,提出了基于变后密度估计的两种检验方法:限窗非参数广义似然比(NGLR) CuSum检验和非参数限窗自适应(NWLA) CuSum检验。这两个测试都不假设对变化后的分布有任何了解,除非变化后的密度满足一定的平滑条件,允许有效的非参数估计。此外,它们不需要预先收集任何更改后的训练样本。在密度估计量的一定收敛条件下,当虚警率趋于零时,两个检验都是一阶渐近最优的。通过数值结果验证了该分析,其中两个测试都与具有分布知识的基线测试进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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