Maksat Jumamyradov, Murat Munkin, William H. Greene, Benjamin M. Craig
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引用次数: 0
摘要
最近的一项研究表明,最大模拟似然(MSL)估计器在应用于双变量正态和双变量泊松-对数正态模型时会产生明显的偏差。该研究的结论表明,由相关双变量正态结构生成的其他模型也可能存在类似偏差,其中包括混合对数(MIXL)模型的几种常用规格。本文对误差成分(EC)MIXL 的 MSL 估计进行了模拟研究分析。我们发现,MSL 估计器会对估计参数产生明显偏差。当方差参数的真实值较小而相关参数较大时,问题会变得更加严重。在某些情况下,边际效应估计值的偏差高达真实值的 12%。这些偏差在很大程度上不受哈尔顿抽样次数增加的影响。
Biases in the Maximum Simulated Likelihood Estimation of the Mixed Logit Model
In a recent study, it was demonstrated that the maximum simulated likelihood (MSL) estimator produces significant biases when applied to the bivariate normal and bivariate Poisson-lognormal models. The study’s conclusion suggests that similar biases could be present in other models generated by correlated bivariate normal structures, which include several commonly used specifications of the mixed logit (MIXL) models. This paper conducts a simulation study analyzing the MSL estimation of the error components (EC) MIXL. We find that the MSL estimator produces significant biases in the estimated parameters. The problem becomes worse when the true value of the variance parameter is small and the correlation parameter is large in magnitude. In some cases, the biases in the estimated marginal effects are as large as 12% of the true values. These biases are largely invariant to increases in the number of Halton draws.