Markov switching multinomial logit model: An application to accident-injury severities.

Author(s)
Malyshkina, N.V. & Mannering, F.L.
Year
Abstract

In this study, two-state Markov switching multinomial logit models are proposed for statistical modeling of accident-injury severities. These models assume Markov switching over time between two unobserved states of roadway safety as a means of accounting for potential unobserved heterogeneity.The states are distinct in the sense that in different states accident-severity outcomes are generated by separate multinomial logit processes. To demonstrate the applicability of the approach, two-state Markov switching multinomial logit models are estimated for severity outcomes of accidents occurring on Indiana roads over a four-year time period. Bayesian inferencemethods and Markov Chain Monte Carlo (MCMC) simulations are used for model estimation. The estimated Markov switching models result in a superior statistical fit relative to the standard (single-state) multinomial logit models for a number of roadway classes and accident types. It is found thatthe more frequent state of roadway safety is correlated with better weather conditions and that the less frequent state is correlated with adverseweather conditions. (A) Reprinted with permission from Elsevier.

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Publication

Library number
I E142791 /80 / ITRD E142791
Source

Accident Analysis & Prevention. 2009 /07. 41(4) Pp829-838 (31 Refs.)

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This publication is one of our other publications, and part of our extensive collection of road safety literature, that also includes the SWOV publications.