Monitoring for a change point in a sequence of distributions

Lajos Horváth, P. Kokoszka, Shixuan Wang
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引用次数: 2

Abstract

We propose a method for the detection of a change point in a sequence $\{F_i\}$ of distributions, which are available through a large number of observations at each $i \geq 1$. Under the null hypothesis, the distributions $F_i$ are equal. Under the alternative hypothesis, there is a change point $i^* > 1$, such that $F_i = G$ for $i \geq i^*$ and some unknown distribution $G$, which is not equal to $F_1$. The change point, if it exists, is unknown, and the distributions before and after the potential change point are unknown. The decision about the existence of a change point is made sequentially, as new data arrive. At each time $i$, the count of observations, $N$, can increase to infinity. The detection procedure is based on a weighted version of the Wasserstein distance. Its asymptotic and finite sample validity is established. Its performance is illustrated by an application to returns on stocks in the S&P 500 index.
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监视一系列发行版中的变更点
我们提出了一种在分布序列$\{F_i\}$中检测变化点的方法,这些分布可以通过在每个$i \geq 1$上的大量观测得到。零假设下,分布$F_i$相等。在备择假设下,有一个变化点$i^* > 1$,使得$i \geq i^*$和某个未知分布$G$的$F_i = G$不等于$F_1$。如果存在变化点,则变化点是未知的,并且潜在变化点前后的分布是未知的。当新数据到达时,依次做出关于变更点是否存在的决定。在每一次$i$,观测的计数$N$可以增加到无穷大。检测过程是基于Wasserstein距离的加权版本。建立了它的渐近和有限样本有效性。它的表现可以用标准普尔500指数成份股的回报率来说明。
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