In this paper we establish weak convergence theorems for weighted
empirical processes of strong mixing, $\rho$-mixing and associated sequences.
We apply these results to obtain weak convergence of integral functionals of
empirical processes and of mean residual life processes in reliability theory.
To carry out the proofs, we develop two Rosenthal-type inequalities for strong
mixing and associated sequences.
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