In machine learning and computer vision, optimal transport has had significant success in learning generative models and defining metric distances between structured and stochastic data objects, that can be cast as probability measures. The key element of optimal transport is the so called lifting of an exact cost (distance) function, defined on the sample space, to a cost (distance) between probability measures over the sample space. However, in many real life applications the cost is stochastic: e.g., the unpredictable traffic flow affects the cost of transportation between a factory and an outlet. To take this stochasticity into account, we introduce a Bayesian framework for inferring the optimal transport plan distribution induced by th...
This paper deals with the problem of predicting traffic flows and updating these predictions when in...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
The need to analyze large, complex, and multi-modal data sets has become increasingly common across ...
In machine learning and computer vision, optimal transport has had significant success in learning g...
Discrete optimal transportation problems arise in various contexts in engineering, the sciences, and...
We present a new approach to Bayesian inference that entirely avoids Markov chain simulation, by con...
Network-based transport models are used for a host of purposes, from estimation of travel demand thr...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
Optimal transport maps define a one-to-one correspondence between probability distributions, and as ...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
In this paper, we review both the fundamentals and the expansion of computational Bayesian econometr...
Characterizing and sampling from probability distributions is useful to reason about uncertainty in ...
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 deals with the problem of predicting traffic flows and updating these predictions when in...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
The need to analyze large, complex, and multi-modal data sets has become increasingly common across ...
In machine learning and computer vision, optimal transport has had significant success in learning g...
Discrete optimal transportation problems arise in various contexts in engineering, the sciences, and...
We present a new approach to Bayesian inference that entirely avoids Markov chain simulation, by con...
Network-based transport models are used for a host of purposes, from estimation of travel demand thr...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Aeronautics and Astronautics, 2...
AbstractThis study proposes a statistical model to estimate route traffic flows in congested network...
Optimal transport maps define a one-to-one correspondence between probability distributions, and as ...
International audienceOptimal transport (OT) defines a powerful framework to compare probability dis...
In this paper, we review both the fundamentals and the expansion of computational Bayesian econometr...
Characterizing and sampling from probability distributions is useful to reason about uncertainty in ...
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 deals with the problem of predicting traffic flows and updating these predictions when in...
Decision analysis provides a framework for searching an optimal solution under uncertainties and pot...
The need to analyze large, complex, and multi-modal data sets has become increasingly common across ...