Monitoring for a change point in a sequence of distributions

Abstract

We propose a method for the detection of a change point in a sequence {Fi}\{F_i\} of distributions, which are available through a large number of observations at each i1i \geq 1. Under the null hypothesis, the distributions FiF_i are equal. Under the alternative hypothesis, there is a change point i>1i^* > 1, such that Fi=GF_i = G for iii \geq i^* and some unknown distribution GG, which is not equal to F1F_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 ii, the count of observations, NN, 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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