We derive the distribution of the eigenvalues of a large sample covariance matrix when the data is dependent in time. More precisely, the dependence for each variable is modelled as a linear process , where are assumed to be independent random variables with finite fourth moments. If the sample size and the number of variables both converge to infinity such that , then the empirical spectral distribution of converges to a non\hyp{}random distribution which only depends on and the spectral density of . In particular, our results apply to (fractionally integrated) ARMA processes, which we illustrate by some examples.
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