Title of article
Empirical likelihood block bootstrapping
Author/Authors
Allen، نويسنده , , Jason and Gregory، نويسنده , , Allan W. and Shimotsu، نويسنده , , Katsumi، نويسنده ,
Pages
12
From page
110
To page
121
Abstract
Monte Carlo evidence has made it clear that asymptotic tests based on generalized method of moments (GMM) estimation have disappointing size. The problem is exacerbated when the moment conditions are serially correlated. Several block bootstrap techniques have been proposed to correct the problem, including Hall and Horowitz (1996) and Inoue and Shintani (2006). We propose an empirical likelihood block bootstrap procedure to improve inference where models are characterized by nonlinear moment conditions that are serially correlated of possibly infinite order. Combining the ideas of Kitamura (1997) and Brown and Newey (2002), the parameters of a model are initially estimated by GMM which are then used to compute the empirical likelihood probability weights of the blocks of moment conditions. The probability weights serve as the multinomial distribution used in resampling. The first-order asymptotic validity of the proposed procedure is proven, and a series of Monte Carlo experiments show it may improve test sizes over conventional block bootstrapping.
Keywords
Empirical likelihood , Generalized methods of moments , block bootstrap
Journal title
Astroparticle Physics
Record number
1560178
Link To Document