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Weak dependence, models and some applications

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Abstract

The paper is devoted to recall weak dependence conditions from Dedecker et al. (Weak dependence, examples and applications. Lecture Notes in Statistics, vol 190, 2007)’s monograph; the main basic results are recalled here and we go further in some new applications. We develop here several models of weakly dependent processes and random fields. Among them an ARCH() model is considered with statistical applications to ordinary least squares. A last part aims at proving new asymptotic results for weakly dependent random fields. Such applications are indeed the main proof of the interest of this theoretical notion which measures the asymptotic decorrelation of a process.

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Correspondence to Paul Doukhan.

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Doukhan, P., Mayo, N. & Truquet, L. Weak dependence, models and some applications. Metrika 69, 199–225 (2009). https://doi.org/10.1007/s00184-008-0216-1

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