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Parameter Estimation: The Proper Way to Use Bayesian Posterior Processes with Brownian Noise

机译:参数估计:使用带布朗噪声的贝叶斯后验过程的正确方法

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This paper studies a problem of Bayesian parameter estimation for a sequence of scaled counting processes whose weak limit is a Brownian motion with an unknown drift. The main result of the paper is that the limit of the posterior distribution processes is, in general, not equal to the posterior distribution process of the mentioned Brownian motion with the unknown drift. Instead, it is equal to the posterior distribution process associated with a Brownian motion with the same unknown drift and a different standard deviation coefficient. The difference between the two standard deviation coefficients can be arbitrarily large. The characterization of the limit of the posterior distribution processes is then applied to a family of stopping time problems. We show that the proper way to find asymptotically optimal solutions to stopping time problems, with respect to the scaled counting processes, is by looking at the limit of the posterior distribution processes rather than by the naive approach of looking at the limit of the scaled counting processes themselves. The difference between the performances can be arbitrarily large.
机译:本文研究了一系列弱点是具有未知漂移的布朗运动的按比例缩放计数过程的贝叶斯参数估计问题。本文的主要结果是,后验分布过程的极限通常不等于提到的具有未知漂移的布朗运动的后验分布过程。相反,它等于与具有相同未知漂移和不同标准偏差系数的布朗运动相关的后验分布过程。两个标准偏差系数之间的差可以任意大。然后将后验分布过程的极限特征应用于一系列停工时间问题。我们表明,相对于缩放计数过程,找到停止时间问题的渐近最优解的正确方法是通过查看后验分布过程的极限,而不是通过幼稚的方法查看缩放计数的极限自己处理。表演之间的差异可以任意大。

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