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A Bayesian approach to sequential monitoring of nonlinear profiles using wavelets

机译:使用小波对非线性轮廓进行连续监视的贝叶斯方法

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We consider change-point detection and estimation in sequences of functional observations. This setting often arises when the quality of a process is characterized by such observations, called profiles, and monitoring profiles for changes in structure can be used to ensure the stability of the process over time. While interest in phase II profile monitoring has grown, few methods approach the problem from a Bayesian perspective. We propose a wavelet-based Bayesian methodology that bases inference on the posterior distribution of the change point without placing restrictive assumptions on the form of profiles. By obtaining an analytic form of this posterior distribution, we allow the proposed method to run online without using Markov chain Monte Carlo (MCMC) approximation. Wavelets, an effective tool for estimating nonlinear signals from noise-contaminated observations, enable us to flexibly distinguish between sustained changes in profiles and the inherent variability of the process. We analyze observed profiles in the wavelet domain and consider two possible prior distributions for coefficients corresponding to the unknown change in the sequence. These priors, previously applied in the nonparametric regression setting, yield tuning-free choices of hyperparameters. We present additional considerations for controlling computational complexity over time and their effects on performance. The proposed method significantly outperforms a relevant frequentist competitor on simulated data.
机译:我们考虑功能观察序列中的变化点检测和估计。这种设置通常在以下情况下出现:过程质量以此类观察为特征,称为概要,并且可以使用监视结构变化的概要来确保过程随时间的稳定性。尽管对II期配置文件监视的兴趣有所增加,但是很少有方法从贝叶斯角度解决该问题。我们提出了一种基于小波的贝叶斯方法,该方法基于对变化点的后验分布的推断,而不会对轮廓的形式施加限制性假设。通过获得这种后验分布的解析形式,我们允许提出的方法在线运行而无需使用马尔可夫链蒙特卡洛(MCMC)近似。小波是一种有效的工具,可用来从受噪声污染的观测值中估计非线性信号,使我们能够灵活地区分轮廓的持续变化和过程的固有可变性。我们分析了小波域中观察到的轮廓,并考虑了与序列中未知变化相对应的两个可能的先验分布系数。先前应用于非参数回归设置中的这些先验条件产生了无需调整的超参数选择。我们提出了一些额外的考虑因素,以控制随着时间的推移的计算复杂性及其对性能的影响。该方法在模拟数据上明显优于相关的常客竞争对手。

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