We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scale networked transit systems. The approach finds posterior distribution estimates of the OD-coefficients, which describe the relative proportions of passengers travelling between origin and destination locations, via a Hamiltonian Monte Carlo sampling procedure. We suggest two different inference model formulations, the instantaneous-balance and average-delay model.The average-delay model is generally more robust in determining accurate and precise coefficient posteriors across various combinations of observation properties. The instantaneous-balance model, however, requires lower resolution count observations and produces estimates comparable...
This study applies Bayesian inference in an attempt to trace probabilistic route choices made by pub...
Using smart card systems for public transport fare collection has provided a great opportunity to ac...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
Estimation of origin⁻destination (OD) demand plays a key role in successful transportation stu...
This paper proposes an integrated Bayesian statistical inference framework to characterize passenger...
Origin-destination (O-D) matrices are essential inputs to dynamic traffic assignment and traffic sim...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
In transportation planning, one of the first steps is to estimate the travel demand. A product of th...
Information on the origin-destination (OD) matrix of a transport network is a fundamental requiremen...
We study Bayesian models and methods for analysing network traffic counts in problems of inference a...
The key factor that complicates statistical inference for an origin-destination (O-D) matrix is that...
This study applies Bayesian inference in an attempt to trace probabilistic route choices made by pub...
This study applies Bayesian inference in an attempt to trace probabilistic route choices made by pub...
Using smart card systems for public transport fare collection has provided a great opportunity to ac...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
We propose a Bayesian inference approach for static Origin-Destination (OD)-estimation in large-scal...
Estimation of origin⁻destination (OD) demand plays a key role in successful transportation stu...
This paper proposes an integrated Bayesian statistical inference framework to characterize passenger...
Origin-destination (O-D) matrices are essential inputs to dynamic traffic assignment and traffic sim...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
This paper presents a Bayesian network model for estimating origin-destination matrices. Most existi...
In transportation planning, one of the first steps is to estimate the travel demand. A product of th...
Information on the origin-destination (OD) matrix of a transport network is a fundamental requiremen...
We study Bayesian models and methods for analysing network traffic counts in problems of inference a...
The key factor that complicates statistical inference for an origin-destination (O-D) matrix is that...
This study applies Bayesian inference in an attempt to trace probabilistic route choices made by pub...
This study applies Bayesian inference in an attempt to trace probabilistic route choices made by pub...
Using smart card systems for public transport fare collection has provided a great opportunity to ac...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...