The empirical saddlepoint distribution provides an approximation to the sampling distributions for the GMM parameter estimates and the statistics that test the overidentifying restrictions. The empirical saddlepoint distribution permits asymmetry, non-normal tails, and multiple modes. If identification assumptions are satisfied, the empirical saddlepoint distribution converges to the familiar asymptotic normal distribution. In small sample Monte Carlo simulations, the empirical saddlepoint performs as well as, and often better than, the bootstrap. The formulas necessary to transform the GMM moment conditions to the estimation equations needed for the saddlepoint approximation are provided. Unlike the absolute errors associated with the asy...
grantor: University of TorontoWe examine the implications of using estimated cumulants in ...
Saddlepoint methods present a convenient way to approximate probabilities associated with canonical ...
Saddlepoint techniques provide accurate, higher order, small sample approximations to the distributi...
The empirical saddlepoint distribution provides an approximation to the sampling distributions for t...
The empirical saddlepoint distribution provides an approximation to the sampling distributions for t...
Previous studies have shown that existing moment-based estimation approaches have poor small-sample ...
The saddlepoint method provides accurate approximations for the distributions of many test statistic...
Thesis (Ph. D.)--University of Washington, 1996Higher order asymptotic methods based on the saddlepo...
We obtain saddlepoint approximations for tail probabilities of the Studentized ratio and regression ...
Title: Statistical inference based on saddlepoint approximations Author: Radka Sabolová Abstract: Th...
The empirical saddlepoint likelihood (ESPL) estimator is introduced. The ESPL provides improvement ...
The saddlepoint approximation as developed by Daniels [3] is an extremely accurate method for approx...
In this paper, we investigate the use of the empirical distribution function in place of the underly...
Saddlepoint approximations of marginal densities and tail probabilities of general nonlinear statist...
Saddlepoint approximations of marginal densities and tail probabilities of general nonlinear statist...
grantor: University of TorontoWe examine the implications of using estimated cumulants in ...
Saddlepoint methods present a convenient way to approximate probabilities associated with canonical ...
Saddlepoint techniques provide accurate, higher order, small sample approximations to the distributi...
The empirical saddlepoint distribution provides an approximation to the sampling distributions for t...
The empirical saddlepoint distribution provides an approximation to the sampling distributions for t...
Previous studies have shown that existing moment-based estimation approaches have poor small-sample ...
The saddlepoint method provides accurate approximations for the distributions of many test statistic...
Thesis (Ph. D.)--University of Washington, 1996Higher order asymptotic methods based on the saddlepo...
We obtain saddlepoint approximations for tail probabilities of the Studentized ratio and regression ...
Title: Statistical inference based on saddlepoint approximations Author: Radka Sabolová Abstract: Th...
The empirical saddlepoint likelihood (ESPL) estimator is introduced. The ESPL provides improvement ...
The saddlepoint approximation as developed by Daniels [3] is an extremely accurate method for approx...
In this paper, we investigate the use of the empirical distribution function in place of the underly...
Saddlepoint approximations of marginal densities and tail probabilities of general nonlinear statist...
Saddlepoint approximations of marginal densities and tail probabilities of general nonlinear statist...
grantor: University of TorontoWe examine the implications of using estimated cumulants in ...
Saddlepoint methods present a convenient way to approximate probabilities associated with canonical ...
Saddlepoint techniques provide accurate, higher order, small sample approximations to the distributi...