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首页> 外文期刊>Transportation Research Part B: Methodological >A simulation evaluation of the maximum approximate composite marginal likelihood (MACML) estimator for mixed multinomial probit models
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A simulation evaluation of the maximum approximate composite marginal likelihood (MACML) estimator for mixed multinomial probit models

机译:混合多项式概率模型的最大近似复合边际似然(MACML)估计器的仿真评估

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This paper evaluates the ability of the maximum approximate composite marginal likelihood (MACML) estimation approach to recover parameters from finite samples in mixed cross-sectional and panel multinomial probit models. Comparisons with the maximum simulated likelihood (MSL) estimation approach are also undertaken. The results indicate that the MACML approach recovers parameters much more accurately than the MSL approach in all model structures and covariance specifications. The MACML inference approach also estimates the parameters efficiently, with the asymptotic standard errors being, in general, only a small proportion of the true values. As importantly, the MACML inference approach takes only a very small fraction of the time needed for MSL estimation. In particular, the results suggest that, for the case of five random coefficients, the MACML approach is about 50 times faster than the MSL for the cross-sectional random coefficients case, about 15 times faster than the MSL for the panel inter-individual random coefficients case, and about 350 times or more faster than the MSL for the panel intra- and inter-individual random coefficients case. As the number of alternatives in the unordered-response model increases, one can expect even higher computational efficiency factors for the MACML over the MSL approach. Further, as should be evident in the panel intra- and inter-individual random coefficients case, the MSL is all but practically infeasible when the mixing structure leads to an explosion in the dimensionality of integration in the likelihood function, but these situations are handled with ease in the MACML approach. It is hoped that the MACML procedure will spawn empirical research into rich model specifications within the context of unordered multinomial choice modeling, including autoregressive random coefficients, dynamics in coefficients, space-time effects, and spatial/social interactions.
机译:本文评估了最大近似复合边缘可能性(MACML)估计方法从混合横截面和面板多项式概率模型中的有限样本中恢复参数的能力。还与最大模拟似然(MSL)估计方法进行了比较。结果表明,在所有模型结构和协方差规范中,MACML方法比MSL方法更准确地恢复参数。 MACML推理方法还可以有效地估计参数,而渐进标准误差通常仅占真实值的一小部分。重要的是,MACML推理方法仅占用MSL估计所需时间的很小一部分。特别是,结果表明,对于五个随机系数,对于横截面随机系数情况,MACML方法比MSL快约50倍,对于面板个体间随机,MSML约快15倍。系数的情况下,比小组内部和个体间随机系数情况的MSL快约350倍或更多。随着无序响应模型中替代方案的数量增加,人们可以期望与MSL方法相比,MACML的计算效率更高。此外,正如在面板内和个体间随机系数情况下显而易见的那样,当混合结构导致似然函数的积分维数爆炸时,MSL实际上几乎是不可行的,但是这些情况可以通过简化MACML方法。希望MACML程序能在无序多项式选择建模的背景下对丰富的模型规范进行实证研究,包括自回归随机系数,系数动力学,时空效应和空间/社会互动。

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