Higher-order Improvements of the Parametric Bootstrap for Long-memory Gaussian Processes
Year of publication: |
2002-08
|
---|---|
Authors: | Andrews, Donald W.K. ; Lieberman, Offer |
Institutions: | Cowles Foundation for Research in Economics, Yale University |
Subject: | Asymptotics | confidence intervals | delta method | Edgeworth expansion | Gaussian process | long memory | maximum likelihood estimator | parametric bootstrap | t statistic | Whittle likelihood |
Extent: | application/pdf |
---|---|
Series: | |
Type of publication: | Book / Working Paper |
Language: | English |
Notes: | Published in Journal of Econometrics (2006), 133: 673-702 The price is None Number 1378 42 pages |
Classification: | C12 - Hypothesis Testing ; C13 - Estimation ; C15 - Statistical Simulation Methods; Monte Carlo Methods |
Source: |
-
Higher-order Improvements of the Parametric Bootstrap for Markov Processes
Andrews, Donald W.K., (2001)
-
Higher-Order Improvements of a Computationally Attractive-Step Bootstrap for Extremum Estimators
Andrews, Donald W.K., (1999)
-
The Block-block Bootstrap: Improved Asymptotic Refinements
Andrews, Donald W.K., (2002)
- More ...
-
Andrews, Donald W.K., (2002)
-
Lieberman, Offer, (2001)
-
A Multivariate Stochastic Unit Root Model with an Application to Derivative Pricing
Lieberman, Offer, (2014)
- More ...