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Authordc.contributor.authorGuevara Cue, Cristian Angelo 
Authordc.contributor.authorTang, Yue 
Authordc.contributor.authorGao, Song 
Admission datedc.date.accessioned2019-05-29T13:41:00Z
Available datedc.date.available2019-05-29T13:41:00Z
Publication datedc.date.issued2017
Cita de ítemdc.identifier.citationTransportation Research Part B 117 (2018) 850–861
Identifierdc.identifier.issn01912615
Identifierdc.identifier.other10.1016/j.trb.2017.09.006
Identifierdc.identifier.urihttps://repositorio.uchile.cl/handle/2250/169071
Abstractdc.description.abstractLearning-based models that capture travelers’ day-to-day learning processes in repeated travel choices could benefit from ubiquitous sensors such as smartphones, which provide individual-level longitudinal data to help validate and improve such models. However, the common problem of missing initial observations in longitudinal data collection can lead to inconsistent estimates of perceived value of attributes in question, and thus inconsistent parameter estimates. In this paper, the stated problem is addressed by treating the miss- ing observations as latent variables in an instance-based learning model that is estimated via maximum simulated likelihood (MSL). The MSL method is implemented in practice us- ing random sampling and importance sampling. Monte Carlo experimentation based on synthetic data shows that both the MSL with random sampling (MSLrs) and MSL with im- portance sampling (MSLis) are effective in correcting for the endogeneity problem in that the percent error and empirical coverage of the estimators are greatly improved after the correction. Compared to the MSLrs method, the MSLis method is superior in both effec- tiveness and computational efficiency. Furthermore, MSLis passes a formal statistical test for the recovery of the population values up to a scale with a large number of missing ob- servations, while MSLrs systematically fails due to the curse of dimensionality. The impacts of sampling size in MSLrs and number of high probability choice sequences in MSLis on the methods’ performances are investigated the methods are applied to an experimental route-choice dataset to demonstrate their empirical application. Hausman–McFadden tests show that the estimators after correction are statistically equal to the estimators of the full dataset without missing observations, confirming that the proposed methods are practical and effective for addressing the stated problem.
Lenguagedc.language.isoen
Publisherdc.publisherElsevier
Type of licensedc.rightsAttribution-NonCommercial-NoDerivs 3.0 Chile
Link to Licensedc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/cl/
Sourcedc.sourceTransportation Research Part B: Methodological
Keywordsdc.subjectEndogeneity
Keywordsdc.subjectInitial condition problem
Keywordsdc.subjectLearning model
Keywordsdc.subjectMaximum simulated likelihood
Keywordsdc.subjectMultiple imputation
Títulodc.titleThe initial condition problem with complete history dependency in learning models for travel choices
Document typedc.typeArtículo de revista
Catalogueruchile.catalogadorlaj
Indexationuchile.indexArtículo de publicación SCOPUS
uchile.cosechauchile.cosechaSI


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Attribution-NonCommercial-NoDerivs 3.0 Chile
Except where otherwise noted, this item's license is described as Attribution-NonCommercial-NoDerivs 3.0 Chile