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Stationarity as a Path Property with Applications in Time Series Analysis

Abstract

Traditionally stationarity refers to shift invariance of the distribution of a stochastic process. In this paper, we rediscover stationarity as a path property instead of a distributional property. More precisely, we characterize a set of paths denoted as AA, which corresponds to the notion of stationarity. On one hand, the set AA is shown to be large enough, so that for any stationary process, almost all of its paths are in AA. On the other hand, we prove that any path in AA will behave in the optimal way under any stationarity test satisfying some mild conditions. The results provide a unified framework to understand and assess the existing time series tests for stationarity, and can potentially lead to new families of stationarity tests.

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