Estimation of Recursive Route Choice Models with Incomplete Trip Observations
Tien Mai, The Viet Bui, Quoc Phong Nguyen, Tho V. Le

TL;DR
This paper introduces efficient algorithms for estimating recursive route choice models from incomplete trip data, leveraging EM and linear system solutions to handle missing links and improve estimation speed.
Contribution
It proposes a novel decomposition-composition algorithm that accelerates estimation by reducing the number of linear systems needed, applicable to various recursive route choice models.
Findings
DC algorithm outperforms baseline methods in accuracy
Proposed methods effectively handle incomplete trip observations
Algorithms applicable to multiple recursive route choice models
Abstract
This work concerns the estimation of recursive route choice models in the situation that the trip observations are incomplete, i.e., there are unconnected links (or nodes) in the observations. A direct approach to handle this issue would be intractable because enumerating all paths between unconnected links (or nodes) in a real network is typically not possible. We exploit an expectation-maximization (EM) method that allows to deal with the missing-data issue by alternatively performing two steps of sampling the missing segments in the observations and solving maximum likelihood estimation problems. Moreover, observing that the EM method would be expensive, we propose a new estimation method based on the idea that the choice probabilities of unconnected link observations can be exactly computed by solving systems of linear equations. We further design a new algorithm, called as…
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Taxonomy
TopicsEconomic and Environmental Valuation · Transportation Planning and Optimization · Data Management and Algorithms
MethodsSPEED: Separable Pyramidal Pooling EncodEr-Decoder for Real-Time Monocular Depth Estimation on Low-Resource Settings
