Author/Authors :
F. Comte، نويسنده , , J. Dedecker and M.L. Taupin، نويسنده ,
Abstract :
We consider a model Yt stht in which ~st ! is not independent of the noise
process ~ht ! but st is independent of ht for each t+ We assume that ~st ! is stationary,
and we propose an adaptive estimator of the density of ln~st
2! based on the
observations Yt + Under a new dependence structure, the t-dependency defined
by Dedecker and Prieur ~2005, Probability Theory and Related Fields 132,
203–236!, we prove that the rates of this nonparametric estimator coincide with
the rates obtained in the independent and identically distributed ~i+i+d+! case when
~st ! and ~ht ! are independent+ The results apply to various linear and nonlinear
general autoregressive conditionally heteroskedastic ~ARCH! processes+ They are
illustrated by simulations applying the deconvolution algorithm of Comte, Rozenholc,
and Taupin ~2006, Canadian Journal of Statistics 34, 431– 452! to a new
noise density+