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Robust discrete choice models with t-distributed kernel errors

机译:具有 t 分布核错误的鲁棒离散选择模型

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Abstract Outliers in discrete choice response data may result from misclassification and misreporting of the response variable and from choice behaviour that is inconsistent with modelling assumptions (e.g. random utility maximisation). In the presence of outliers, standard discrete choice models produce biased estimates and suffer from compromised predictive accuracy. Robust statistical models are less sensitive to outliers than standard non-robust models. This paper analyses two robust alternatives to the multinomial probit (MNP) model. The two models are robit models whose kernel error distributions are heavy-tailed t-distributions to moderate the influence of outliers. The first model is the multinomial robit (MNR) model, in which a generic degrees of freedom parameter controls the heavy-tailedness of the kernel error distribution. The second model, the generalised multinomial robit (Gen-MNR) model, is more flexible than MNR, as it allows for distinct heavy-tailedness in each dimension of the kernel error distribution. For both models, we derive Gibbs samplers for posterior inference. In a simulation study, we illustrate the finite sample properties of the proposed Bayes estimators and show that MNR and Gen-MNR produce more accurate estimates if the choice data contain outliers through the lens of the non-robust MNP model. In a case study on transport mode choice behaviour, MNR and Gen-MNR outperform MNP by substantial margins in terms of in-sample fit and out-of-sample predictive accuracy. The case study also highlights differences in elasticity estimates across models.
机译:摘要 离散选择响应数据中的异常值可能是由于响应变量的错误分类和误报以及与建模假设不一致的选择行为(例如随机效用最大化)造成的。在存在异常值的情况下,标准离散选择模型会产生有偏差的估计值,并影响预测准确性。与标准非鲁棒模型相比,稳健统计模型对异常值的敏感度较低。本文分析了多项式概率(MNP)模型的两种稳健替代方案。两种模型均为robit模型,其核误差分布为重尾t分布,以调节异常值的影响。第一个模型是多项式罗比特 (MNR) 模型,其中通用自由度参数控制核误差分布的重尾性。第二种模型是广义多项式罗比特(Gen-MNR)模型,它比MNR更灵活,因为它允许在核误差分布的每个维度上都有不同的重尾性。对于这两个模型,我们推导了用于后验推理的吉布斯采样器。在仿真研究中,我们说明了所提出的贝叶斯估计器的有限样本属性,并表明如果选择数据包含异常值,则MNR和Gen-MNR通过非鲁棒MNP模型的视角产生更准确的估计。在关于运输模式选择行为的案例研究中,MNR 和 Gen-MNR 在样本内拟合和样本外预测准确性方面明显优于 MNP。该案例研究还强调了不同模型之间弹性估计值的差异。

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