Moments based inference in small samples
Abstract
In this work we propose a nonparametric estimator for parameters which
are embodied in given moment conditions. Here we are interested in small
samples problems. We analyze conditions under which it is possible to represent
the distribution of data points conditional on their relative frequencies
as a multinomial distribution. We derive the posterior distribution for the relative
frequencies of the observed data points via Bayes’ Law and specifying
a Dirichlet objective prior, the latter is obtained matching the prior modes
for unknown relative frequencies with the optimal weights computed under
a special form of the Empirical Likelihood estimator for the parameters of
interest. The prior specification proposed has an interesting interpretation
in terms of information-theoretic arguments. The estimators we construct
in this paper share the general idea with the Bayesian Bootstrap by Rubin
(1981), however its derivation starts from a different point o view, and also
the prior specification over the distribution function of the data is objectively
derived via Empirical Likelihood methods. We propose a Monte Carlo algorithm
to derive a distribution for the parameters of interest based on the
derived posterior for the relative frequencies of data points. A simulated toy
example shows that in small sample the estimation proposed is more accurate
than alternative non-bayesian nonparametric methods. Future works
will include an asymptotic analysis of the proposed estimator, as well as
more complex simulated validations for small samples.