Lugsail lag windows for estimating time-average covariance matrices

成果类型:
Article
署名作者:
Vats, D.; Flegal, J. M.
署名单位:
Indian Institute of Technology System (IIT System); Indian Institute of Technology (IIT) - Kanpur; University of California System; University of California Riverside
刊物名称:
BIOMETRIKA
ISSN/ISSBN:
0006-3444
DOI:
10.1093/biomet/asab049
发表日期:
2022
页码:
735750
关键词:
spectral variance estimators strong consistency batch means heteroskedasticity kernel series
摘要:
Lag windows are commonly used in time series analysis, econometrics, steady-state simulation and Markov chain Monte Carlo to estimate time-average covariance matrices. In the presence of positive correlation in the underlying process, estimators of this matrix almost always exhibit significant negative bias, leading to undesirable finite-sample properties. We propose a new family of lag windows specifically designed to improve finite-sample performance by offsetting this negative bias. Any existing lag window can be adapted into a lugsail equivalent with no additional assumptions. We use these lag windows in spectral variance estimators and demonstrate their advantages in a linear regression model with autocorrelated and heteroskedastic residuals. We further employ the lugsail lag windows in weighted batch means estimators because of their computational efficiency on large simulation output. We obtain bias and variance results for these multivariate estimators and significantly weaken the mixing condition on the process. Superior finite-sample properties are demonstrated in a vector autoregressive process and a Bayesian logistic regression model.