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Efficiently Estimating Nested Logit Models with Choice-Based Samples: Example Applications

机译:使用基于选择的样本有效地估计嵌套Logit模型:示例应用

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摘要

Choice-based samples oversample infrequently chosen alternatives to obtain an effective representation of the behavior of people who select these alternatives. However, the use of choice-based samples requires recognition of the sampling process in formulating the estimation procedure. In general, this procedure can be accomplished by applying weights to the observed choices in the estimation process. Unfortunately, the use of such weighted estimation procedures for choice models does not yield efficient estimators. However, for the special case of the multinomial logit model with a full set of alternative-specific constants, the standard maximum likelihood estimator—which is efficient—can be used with adjustment of the alternative-specific constants. The same maximum likelihood estimator can also be used with adjustment to estimate nested logit models with choice-based samples. The proof of this property is qualitatively described, and examples demonstrate how to apply the adjustment procedure.
机译:基于选择的样本对不经常选择的替代品进行过采样,以获得对选择这些替代品的人的行为的有效表示。但是,基于选择的样本的使用要求在制定估算程序时要认识到采样过程。通常,可以通过在估计过程中将权重应用于观察到的选择来完成此过程。不幸的是,将这种加权估计程序用于选择模型不能产生有效的估计器。但是,对于具有全套特定替代常数的多项式logit模型的特殊情况,可以在调整特定替代常数时使用有效的标准最大似然估计量。相同的最大似然估计器也可以与调整一起使用,以估计基于选择的样本的嵌套logit模型。定性地描述了此属性的证明,并通过示例演示了如何应用调整过程。

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