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Measuring and enhancing the transferability of hidden Markov models for dynamic travel behavioral analysis
Authors:Xiong  Chenfeng  Yang  Di  Ma  Jiaqi  Chen  Xiqun  Zhang  Lei
Affiliation:1.Maryland Transportation Institute, Department of Civil and Environmental Engineering, University of Maryland, College Park, MD, USA
;2.Department of Civil and Architectural Engineering and Construction Management, University of Cincinnati, Cincinnati, OH, USA
;3.College of Civil Engineering and Architecture, Zhejiang University, Hangzhou, Zhejiang, China
;
Abstract:

As an emerging dynamic modeling method that incorporates time-dependent heterogeneity, hidden Markov models (HMM) are receiving increased research attention with regards to travel behavior modeling and travel demand forecasting. This paper focuses on the model transferability of HMM. Based on a series of transferability and goodness-of-fit measures, it finds that HMMs have a superior performance in predicting future transportation mode choice, compared to conventional choice models. Aimed at further enhancing its transferability, this paper proposes a Bayesian conditional recalibration approach that maps the model prediction directly to the context data. Compared to traditional model transferring methods, the proposed approach does not assume fixed parameterization and recalibrates the utilities and the prediction directly. A comparison between the proposed approach and the traditional transfer-scaling favors our approach, with higher goodness-of-fit. This paper fills the gap in understanding the transferability of HMM and proposes a practical method that enables potential applications of HMM.

Keywords:
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