A Bayesian View on Detecting Drifts by Nonparametric Methods

Steland Ansgar
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引用次数: 5

Abstract

We study a nonparametric sequential detection procedure, which aims at detecting the first time point where a drift term appears in a stationary process, from a Bayesian perspective. The approach is based on a nonparametric model for the drift, a nonparametric kernel smoother which is used to define the stopping rule, and a performance measure which determines for each smoothing kernel and each given drift the asymptotic accuracy of the method. We look at this approach by parameterizing the drift and putting a prior distribution on the parameter vector. We are able to identify the optimal prior distribution which minimizes the expected performance measure. Consequently, we can judge whether a certain prior distribution yields good or even optimal asymptotic detection. We consider several important special cases where the optimal prior can be calculated explicitly.
非参数方法检测漂移的贝叶斯观点
本文研究了一种非参数序列检测方法,该方法旨在从贝叶斯的角度检测平稳过程中出现漂移项的第一个时间点。该方法基于漂移的非参数模型,用于定义停止规则的非参数核平滑器,以及用于确定每个平滑核和每个给定漂移的方法的渐近精度的性能度量。我们通过参数化漂移并在参数向量上放置先验分布来看待这种方法。我们能够识别最优的先验分布,使期望的性能度量最小化。因此,我们可以判断某个先验分布是否产生良好甚至最优的渐近检测。我们考虑了几个重要的特殊情况,其中最优先验可以显式计算。
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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