Chapter 8: Robust Estimation and Inference for Importance Sampling Estimators with Infinite Variance*
-
Published:2020
Joshua C. C. Chan, Chenghan Hou, Thomas Tao Yang, 2020. "Robust Estimation and Inference for Importance Sampling Estimators with Infinite Variance*", Essays in Honor of Cheng Hsiao, Tong Li, M. Hashem Pesaran, Dek Terrell
Download citation file:
Abstract
Importance sampling is a popular Monte Carlo method used in a variety of areas in econometrics. When the variance of the importance sampling estimator is infinite, the central limit theorem does not apply and estimates tend to be erratic even when the simulation size is large. The authors consider asymptotic trimming in such a setting. Specifically, the authors propose a bias-corrected tail-trimmed estimator such that it is consistent and has finite variance. The authors show that the proposed estimator is asymptotically normal, and has good finite-sample properties in a Monte Carlo study.
