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Estimation and welfare analysis from mixed logit models with large choice sets

机译:大选择集混合logit模型的估计和福利分析

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摘要

We show how McFadden's sampling of alternatives approach and the expectation-maximization (EM) algorithm can be used to consistently estimate latent-class, mixed logit models in applications with large choice sets. We present Monte Carlo evidence confirming our approach works well in small samples, apply the method to a dataset of Wisconsin angler site destination choices, and report welfare estimates for several policy scenarios. Of interest to applied researchers, our results quantify the tradeoffs between model run-time, accuracy, and precision of welfare estimates associated with samples of different sizes. Moreover, although our results confirm that larger efficiency losses arise with smaller samples as theory would predict, they also suggest that depending on researcher needs, random samples as small as 28 alternatives (5% of the full set of alternatives in our application) can produce relatively accurate welfare estimates that are useful for exploratory modeling, sensitivity analysis, and policy purposes. (C) 2018 Elsevier Inc. All rights reserved.
机译:我们展示了McFadden的替代抽样方法和期望最大化(EM)算法如何用于在具有大选择集的应用程序中一致地估计潜在类,混合logit模型。我们提供了蒙特卡洛证据,证明我们的方法在小样本中效果很好,已将该方法应用于威斯康星州垂钓者目的地选择的数据集,并报告了几种政策情景下的福利估算。应用研究人员感兴趣的是,我们的结果量化了模型运行时间,准确性和与不同大小的样本相关的福利估计的准确性之间的权衡。而且,尽管我们的结果证实了理论所预期的那样,较小的样本会产生更大的效率损失,但他们还建议,根据研究人员的需求,可以产生多达28个替代品(占我们应用替代品总数的5%)的随机样本相对准确的福利估算,可用于探索性建模,敏感性分析和政策目的。 (C)2018 Elsevier Inc.保留所有权利。

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