TL;DR
This paper introduces new inverse optimization models and algorithms to infer shared network parameters from heterogeneous travelers' route choices, improving transportation network monitoring and analysis.
Contribution
It proposes novel inverse optimization methods that efficiently learn network parameters from diverse agent behaviors, addressing limitations of existing models.
Findings
Unique dual prices can be obtained in polynomial time.
Method accurately infers link capacity dual prices from agent observations.
Effective in real-world freeway network data analysis.
Abstract
Despite the ubiquity of transportation data, methods to infer the state parameters of a network either ignore sensitivity of route decisions, require route enumeration for parameterizing descriptive models of route selection, or require complex bilevel models of route assignment behavior. These limitations prevent modelers from fully exploiting ubiquitous data in monitoring transportation networks. Inverse optimization methods that capture network route choice behavior can address this gap, but they are designed to take observations of the same model to learn the parameters of that model, which is statistically inefficient (e.g. requires estimating population route and link flows). New inverse optimization models and supporting algorithms are proposed to learn the parameters of heterogeneous travelers' route behavior to infer shared network state parameters (e.g. link capacity dual…
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