COWLES FOUNDATION FOR RESEARCH IN
ECONOMICS
AT YALE UNIVERSITY
Box 208281
New Haven, CT 06520-8281

COWLES FOUNDATION DISCUSSION PAPER NO. 1051
"Classical Estimation Methods for LDV Models Using
Simulation"
Vassilis A. Hajivassiliou and Paul A. Ruud
July 1993
This paper discusses estimation methods for limited dependent variable (LDV) models
that employ Monte Carlo simulation techniques to overcome computational problems in such
models. These difficulties take the form of high dimensional integrals that need to be
calculated repeatedly but cannot be easily approximated by series expansions. In the past,
investigators were forced to restrict attention to special classes of LDV models that are
computationally manageable. The simulation estimation methods we discuss here make it
possible to estimate LDV models that are computationally intractable using classical
estimation methods.
We first review the ways in which LDV models arise, describing the differences and
similarities in censored and truncated data generating processes. Censoring and truncation
give rise to the troublesome multivariate integrals. Following the LDV models, we
described various simulation methods for evaluating such integrals. Naturally, censoring
and truncation play roles in simulation as well. Finally, estimation methods that rely on
simulation are described. We review three general approaches that combine estimation of
LDV models and simulation: simulation of the log-likelihood function (MLS), simulation of
moment functions (MSM), and simulation of the score (MSS). The MSS is a combination of
ideas from MSL and MSM, treading the efficient score of the log-likelihood function as a
moment function.
We use the rank ordered probit model as an illustrative example to investigate the
comparative properties of these simulation estimation approaches. |