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A recursive logit model with choice aversion and its application to transportation networks
Indexado
WoS WOS:000793294200003
Scopus SCOPUS_ID:85119895956
DOI 10.1016/J.TRB.2021.10.011
Año 2022
Tipo artículo de investigación

Citas Totales

Autores Afiliación Chile

Instituciones Chile

% Participación
Internacional

Autores
Afiliación Extranjera

Instituciones
Extranjeras


Abstract



We propose a recursive logit model which captures the notion of choice aversion by imposing a penalty term that accounts for the dimension of the choice set at each node of the transportation network. We make three contributions. First, we show that our model overcomes the correlation problem between routes, a common pitfall of traditional logit models, and that the choice aversion model can be seen as an alternative to these models. Second, we show how our model can generate violations of regularity in the path choice probabilities. In particular, we show that removing edges in the network may decrease the probability for existing paths. Finally, we show that under the presence of choice aversion, adding edges to the network can make users worse off. In other words, a type of Braess's paradox can emerge outside of congestion and can be characterized in terms of a parameter that measures users’ degree of choice aversion. We validate these contributions by estimating this parameter over GPS traffic data captured on a real-world transportation network.

Métricas Externas



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Disciplinas de Investigación



WOS
Engineering, Civil
Economics
Transportation
Operations Research & Management Science
Transportation Science & Technology
Scopus
Civil And Structural Engineering
Transportation
SciELO
Sin Disciplinas

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Publicaciones WoS (Ediciones: ISSHP, ISTP, AHCI, SSCI, SCI), Scopus, SciELO Chile.

Colaboración Institucional



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Autores - Afiliación



Ord. Autor Género Institución - País
1 Knies, Austin Hombre Indiana University Bloomington - Estados Unidos
Indiana Univ - Estados Unidos
2 Lorca, Jorge Hombre Banco Central de Chile - Chile
3 Melo, Emerson Hombre Indiana University Bloomington - Estados Unidos
Indiana Univ - Estados Unidos

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Financiamiento



Fuente
National Science Foundation
Directorate for Education and Human Resources
Lorca and Melo
Mogens Fosgerau
National Science Foundation NRT grant

Muestra la fuente de financiamiento declarada en la publicación.

Agradecimientos



Agradecimiento
The results in this paper were circulated earlier as two separate papers: “Choice aversion in directed networks”, by Lorca and Melo, and “A recursive logit model with choice aversion and its application to path choice analysis”, by Knies and Melo. The views expressed herein are those of the authors and do not necessarily represent the opinion of Central Bank of Chile or its board. We are very grateful to Mogens Fosgerau, Emma Frejinger, and Tien Mai for facilitating the codes used in this paper. This research was partially funded by the National Science Foundation NRT grant 1735095 , “ Interdisciplinary Training in Complex Networks and Systems ”. We are also very grateful to the Associate Editor and three anonymous referees for their very valuable comments and suggestions that greatly improved the paper.
The results in this paper were circulated earlier as two separate papers: “Choice aversion in directed networks”, by Lorca and Melo, and “A recursive logit model with choice aversion and its application to path choice analysis”, by Knies and Melo. The views expressed herein are those of the authors and do not necessarily represent the opinion of Central Bank of Chile or its board. We are very grateful to Mogens Fosgerau, Emma Frejinger, and Tien Mai for facilitating the codes used in this paper. This research was partially funded by the National Science Foundation NRT grant 1735095 , “ Interdisciplinary Training in Complex Networks and Systems ”. We are also very grateful to the Associate Editor and three anonymous referees for their very valuable comments and suggestions that greatly improved the paper.
This research was partially funded by the National Science Foundation NRT grant 1735095, "Interdisciplinary Training in Complex Networks and Systems". We are also very grateful to the Associate Editor and three anonymous referees for their very valuable comments and suggestions that greatly improved the paper

Muestra la fuente de financiamiento declarada en la publicación.