SMOOTH UNBIASED MULTIVARIATE PROBABILITY SIMULATORS FOR MAXIMUM-LIKELIHOOD-ESTIMATION OF LIMITED DEPENDENT VARIABLE MODELS

被引:197
作者
BORSCHSUPAN, A
HAJIVASSILIOU, VA
机构
[1] YALE UNIV,COWLES FDN,30 HILLHOUSE AVE,NEW HAVEN,CT 06520
[2] UNIV MANNHEIM,W-6800 MANNHEIM,GERMANY
基金
美国国家科学基金会;
关键词
D O I
10.1016/0304-4076(93)90049-B
中图分类号
F [经济];
学科分类号
02 ;
摘要
We apply a new simulation method that solves the multidimensional probability integrals that arise in maximum likelihood estimation of a broad class of limited dependent variable models. The simulation method has four key features: the simulated choice probabilities are unbiased; they are a continuous and differentiable function of the parameters of the model they are bounded between 0 and 1; and their computation takes an effort that is nearly linear in the dimension of the probability integral, independent of the magnitudes of the true probabilities. We also show that the new simulation method produces probability estimates with substantially smaller variance than those generated by acceptance-rejection methods or by Stern's (1992) method. The simulated probabilities can therefore be used to revive the Lerman and Manski (1981) procedure of approximating the likelihood function using simulated choice probabilities by overcoming its computational disadvantages.
引用
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页码:347 / 368
页数:22
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