Title of article :
Bias Reduction through First-order Mean Correction, Bootstrapping and Recursive Mean Adjustment
Author/Authors :
K. D. Patterson، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
Standard methods of estimation for autoregressive models are known to be biased in
finite samples, which has implications for estimation, hypothesis testing, confidence interval
construction and forecasting. Three methods of bias reduction are considered here: first-order
bias correction, FOBC, where the total bias is approximated by the O(T21) bias; bootstrapping;
and recursive mean adjustment, RMA. In addition, we show how first-order bias correction is
related to linear bias correction. The practically important case where the AR model includes an
unknown linear trend is considered in detail. The fidelity of nominal to actual coverage of
confidence intervals is also assessed. A simulation study covers the AR(1) model and a number of
extensions based on the empirical AR(p) models fitted by Nelson & Plosser (1982). Overall,
which method dominates depends on the criterion adopted: bootstrapping tends to be the best at
reducing bias, recursive mean adjustment is best at reducing mean squared error, whilst FOBC
does particularly well in maintaining the fidelity of confidence intervals
Keywords :
Autoregressive model , Bias , bootstrap bias correction , first-order correction , Recursive mean adjustment
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS