A Note on Mixing in High Dimensional Time Series

Abstract
Various mixing conditions have been imposed on high dimensional time series, including the strong mixing (-mixing), maximal correlation coefficient (-mixing), absolute regularity (-mixing), and -mixing. -mixing condition is a routine assumption when studying autoregression models. -mixing can lead to -mixing. In this paper, we prove a way to verify -mixing under a high-dimensional triangular array time series setting by using the Pearson's , mean square contingency. Vector autoregression model VAR(1) and vector autoregression moving average VARMA(1,1) are proved satisfying -mixing condition based on low rank setting.
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