This paper presents a learning-based model of route-choice behavior when information is provided in real time. In a laboratory controlled experiment, participants made a long series of binary route-choice trials relying on real-time information and learning from their personal experience reinforced through feedback. A discrete choice model with a Mixed Logit specification, accounting for panel effects, was estimated based on the experiment's data. It was found that information and experience have a combined effect on drivers' route-choice behavior. Informed participants had faster learning rates and tended to base their decisions on memorization relating to previous outcomes whereas non-informed participants were slower in learning, require...
In two experiments, participants chose between staying on a main route with a certain travel time an...
A model of driver's route choice behavior under advanced traveler information system (ATIS) is devel...
AbstractThe performance of a transportation network is the consequence of users’ choices and the int...
This paper presents a learning-based model of route-choice behavior when information is provided in ...
Advanced travel information systems (ATIS) are designed to provide real time information enabling dr...
The aim of the research is to gain insight into the impact of traffic information on day-to-day rout...
This paper aims to model the traveller's day-to-day route choice in the case of an Advanced Travelle...
Advanced Travel Information Systems (ATISs) are designed to assist travellers in making better trave...
Every traveler makes route choices in an uncertain environment that includes random disruptions to t...
This paper discusses the effect of the feedback mechanism on route-choice decision-making under unce...
The purpose of this paper is to evaluate the potential benefits from real-time travel time informati...
Existing common route choice models are based on random utility theory, which follows the maximum ut...
ABSTRACT 1 Every individual traveler makes route choices in an inherently uncertain environment, 2 d...
© 2014, Taylor & Francis Group, LLC. Nonrecurring disruptions to traffic systems caused by inciden...
In two experiments, participants chose between staying on a main route with a certain travel time an...
A model of driver's route choice behavior under advanced traveler information system (ATIS) is devel...
AbstractThe performance of a transportation network is the consequence of users’ choices and the int...
This paper presents a learning-based model of route-choice behavior when information is provided in ...
Advanced travel information systems (ATIS) are designed to provide real time information enabling dr...
The aim of the research is to gain insight into the impact of traffic information on day-to-day rout...
This paper aims to model the traveller's day-to-day route choice in the case of an Advanced Travelle...
Advanced Travel Information Systems (ATISs) are designed to assist travellers in making better trave...
Every traveler makes route choices in an uncertain environment that includes random disruptions to t...
This paper discusses the effect of the feedback mechanism on route-choice decision-making under unce...
The purpose of this paper is to evaluate the potential benefits from real-time travel time informati...
Existing common route choice models are based on random utility theory, which follows the maximum ut...
ABSTRACT 1 Every individual traveler makes route choices in an inherently uncertain environment, 2 d...
© 2014, Taylor & Francis Group, LLC. Nonrecurring disruptions to traffic systems caused by inciden...
In two experiments, participants chose between staying on a main route with a certain travel time an...
A model of driver's route choice behavior under advanced traveler information system (ATIS) is devel...
AbstractThe performance of a transportation network is the consequence of users’ choices and the int...