Pa. Nze et P. Doukhan, FUNCTIONAL ESTIMATION FOR MIXING TIME-SER IES, Comptes rendus de l'Academie des sciences. Serie 1, Mathematique, 317(4), 1993, pp. 405-408
Let Z = (X(n), Y(n))n is-an-element-of N be an strongly mixing statio
nary stochastic process. We consider delta-estimates of the density of
the marginal distribution of X1 and of the regression function r(.)=E
[Y1/X1=.] for kernel estimates. A finer evaluation of the variance of
these estimates may be undertaken thanks to a new covariance inequalit
y. The bounds reach an optimal order (that is the i. i. d.'s). Optimal
bounds for MISE criterion are deduced from this basic result. We give
uniform almost sure convergence results and uniform almost sure rates
of convergence for such estimates. Uniform L(p) bounds are also given
. We give an outlook at both assumptions of strong dependence and abso
lute regularity. Minimax rates are attained.