Random Regret Minimization and Random Utility Maximization in the Presence of Preference Heterogeneity: An Empirical Contrast

D. Hensher, W. Greene, Chinh Q. Ho
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引用次数: 25

Abstract

Random regret minimization (RRM) interpretations of discrete choices are growing in popularity as a complementary modeling paradigm to random utility maximization (RUM). While behaviorally very appealing in the sense of accommodating the regret of not choosing the best alternative, studies to date suggest that the differences in willingness to pay estimates, choice elasticities, and choice probabilities compared to RUM are small. However, the evidence is largely based on a simple multinomial logit (MNL) form of the RRM model. This paper revisits this behavioral contrast and moves beyond the multinomial logit model to incorporate random parameters, revealing the presence of preference heterogeneity. The important contribution of this paper is to see if the extension of RRM-MNL to RRM-mixed logit in passenger mode choice widens the behavioral differences between RUM and RRM. The current paper has identified a statistically richer improvement in fit of mixed logit compared to multinomial logit under RRM (and RUM) but found small differences overall between the empirical outputs of RUM and RRM, with no basis of an improved model fit between these two nonnested model forms. The inclusion of both model forms should continue to inform the likely range of behavioral outputs during investigation of a broader range of process heuristics designed to capture real world behavioral response.
偏好异质性下的随机后悔最小化与随机效用最大化:实证对比
离散选择的随机遗憾最小化(RRM)解释作为随机效用最大化(RUM)的补充建模范式越来越受欢迎。虽然在行为上非常吸引人,因为没有选择最好的选择而感到后悔,但迄今为止的研究表明,与RUM相比,在支付意愿估计、选择弹性和选择概率方面的差异很小。然而,证据主要是基于RRM模型的简单多项式logit (MNL)形式。本文重新审视了这种行为对比,并超越多项逻辑模型,纳入随机参数,揭示了偏好异质性的存在。本文的重要贡献在于研究了在乘客模式选择中将rmm - mnl扩展到rmm -mixed logit是否扩大了rmm和RRM之间的行为差异。目前的论文已经确定,与RRM(和RUM)下的多项logit相比,混合logit的拟合在统计上有了更丰富的改善,但发现RUM和RRM的经验输出之间的总体差异很小,这两种非嵌套模型形式之间没有改进模型拟合的基础。在更广泛的过程启发法的调查中,两种模型形式的包含应该继续告知行为输出的可能范围,这些过程启发法旨在捕捉真实世界的行为反应。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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