##Statistics Seminar##\\ Department of Mathematics and Statistics
^ **DATE:**|Thursday, October 26, 2023 |
^ **TIME:**|1:15pm -- 2:15pm |
^ **LOCATION:**|WH 100E |
^ **SPEAKER:**|Anton Schick, Binghamton University |
^ **TITLE:**|Efficient Density Estimation in an AR(1) Model |
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**Abstract**
A class of plug-in estimators of the stationary density
of an autoregressive model with autoregression parameter $0<\rho <1$
is presented. These use two types of estimator of the innovation
density, a standard kernel estimator and a weighted kernel estimator
with weights chosen to mimic the condition that the innovation density
has mean zero. Bahadur expansions are obtained for this class of
estimators in $L_1$, the space of integrable functions. These stochastic
expansions establish root-$n$ consistency in the $L_1$ norm.
It is shown that the density estimators based on the weighted kernel
estimators are asymptotically efficient if an asymptotically
efficient estimator of the autoregression parameter is used.
Here asymptotic efficiency is understood in the sense of the
H\'ajek--Le\,Cam convolution theorem.