Estimators for persistent and possibly non-stationary data w
Estimators for persistent and possibly non-stationary data with classical properties
Rate this book:
About This Book
"This paper considers a moments based non-linear estimator that is root-T consistent and uniformly asymptotically normal irrespective of the degree of persistence of the forcing process. These properties hold for linear autoregressive models, linear predictive regressions, as well as certain non-linear dynamic models. Asymptotic normality is obtained because the moments are chosen so that the objective function is uniformly bounded in probability and that a central limit theorem can be applied.Critical values from the normal distribution can be used irrespective of the treatment of the deterministic terms. Simulations show that the estimates are precise, and the t-test has good size in the parameter region where the least squares estimates usually yield distorted inference"--National Bureau of Economic Research web site.
Buy This Book
As an Amazon Associate and Bookshop.org affiliate, BookOrb earns from qualifying purchases.
Write a Review
Sign in to write a review.
More by Yuriy Gorodnichenko
A re-examination of the border
A re-examination of the border effect
Cyclicality of Sales, Regular
Cyclicality of Sales, Regular and Effective Prices
Endogenous information, menu c
Endogenous information, menu costs and inflation persistence
Estimation of dsge models when
Estimation of dsge models when the data are persistent
Globalization and innovation i
Globalization and innovation in emerging markets
Innocent Bystanders? Monetary
Innocent Bystanders? Monetary Policy and Inequality in the U. S.