The empirical saddlepoint likelihood (ESPL) estimator is introduced. The
ESPL provides improvement over one-step GMM estimators by including additional terms to automatically reduce higher order bias. The first order sampling
properties are shown to be equivalent to efficient two-step GMM. New tests are
introduced for hypothesis on the model's parameters. The higher order bias is
calculated and situations of practical interest are noted where this bias will be
smaller than for currently available estimators.
As an application, the ESPL is used to investigate an overidentified moment model. It is shown how the model's parameters can be estimated with
both the ESPL and a conditional ESPL (CESPL), conditional on the overidentifying restrictions being satisfied. This application leads to several new tests
for over-identifying restrictions.
Simulations demonstrate that ESPL and CESPL have smaller bias than
currently available one-step GMM estimators. The simulations also show new
tests for over-identifying restrictions that have performance comparable to or
better than currently available tests. The computations needed to calculate the
ESPL estimator are comparable to those needed for a one-step GMM estimator.