Random Utility Models with Skewed Random Components: the Smallest versus Largest Extreme Value Distribution
Richard T. Carson, Derrick H. Sun, Yixiao Sun

TL;DR
This paper explores the use of skewed extreme value distributions in random utility models, showing that the smallest extreme value distribution offers distinct advantages and different predictions compared to the traditional largest extreme value distribution.
Contribution
It introduces the SEVI distribution as a novel alternative to LEVI in RUMs, providing tractable closed-form choice probabilities and analyzing its implications for choice modeling.
Findings
SEVI model outperforms LEVI in empirical tests
SEVI choice probabilities are computationally tractable
Skewness significantly affects choice predictions
Abstract
At the core of most random utility models (RUMs) is an individual agent with a random utility component following a largest extreme value Type I (LEVI) distribution. What if, instead, the random component follows its mirror image -- the smallest extreme value Type I (SEVI) distribution? Differences between these specifications, closely tied to the random component's skewness, can be quite profound. For the same preference parameters, the two RUMs, equivalent with only two choice alternatives, diverge progressively as the number of alternatives increases, resulting in substantially different estimates and predictions for key measures, such as elasticities and market shares. The LEVI model imposes the well-known independence-of-irrelevant-alternatives property, while SEVI does not. Instead, the SEVI choice probability for a particular option involves enumerating all subsets that contain…
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Taxonomy
TopicsProbability and Risk Models
