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 asymptotic normal distributions
and the bootstrap, the empirical saddlepoint has a relative error. The relative
error leads to a more accurate approximation, particularly in the tails.