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Sequential change detection in the presence of unknown parameters

机译:存在未知参数时的顺序更改检测

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摘要

It is commonly required to detect change points in sequences of random variables. In the most difficult setting of this problem, change detection must be performed sequentially with new observations being constantly received over time. Further, the parameters of both the pre- and post- change distributions may be unknown. In Hawkins and Zamba (Technometrics 47(2): 164-173, 2005), the sequential generalised likelihood ratio test was introduced for detecting changes in this context, under the assumption that the observations follow a Gaussian distribution. However, we show that the asymptotic approximation used in their test statistic leads to it being conservative even when a large numbers of observations is available. We propose an improved procedure which is more efficient, in the sense of detecting changes faster, in all situations. We also show that similar issues arise in other parametric change detection contexts, which we illustrate by introducing a novel monitoring procedure for sequences of Exponentially distributed random variable, which is an important topic in time-to-failure modelling.
机译:通常需要检测随机变量序列中的变化点。在此问题最困难的情况下,必须顺序执行更改检测,并且随着时间的推移不断收到新的观察结果。此外,变化前和变化后分布的参数可能都是未知的。在Hawkins和Zamba(Technometrics 47(2):164-173,2005)中,假设观测值遵循高斯分布,引入了顺序广义似然比检验来检测这种情况下的变化。但是,我们表明,即使有大量观测值可用,他们的检验统计量中使用的渐近逼近也会导致其趋于保守。在所有情况下,从更快地检测到变化的角度来看,我们提出了一种改进的过程,该过程更加有效。我们还表明,在其他参数变化检测上下文中也出现了类似的问题,我们将通过引入一种针对指数分布随机变量序列的新颖监视程序来说明这一点,这是失效时间建模中的重要主题。

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