Computing the volume of a polytope in high dimensions is computationally challenging but has wide applications. Current state-of-the-art algorithms to compute such volumes rely on efficient sampling of a Gaussian distribution restricted to the polytope, using e.g. Hamiltonian Monte Carlo. We present a new sampling strategy that uses a Piecewise Deterministic Markov Process. Like Hamiltonian Monte Carlo, this new method involves simulating trajectories of a non-reversible process and inherits similar good mixing properties. However, importantly, the process can be simulated more easily due to its piecewise linear trajectories - and this leads to a reduction of the computational cost by a factor of the dimension of the space. Our experiments ...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
Markov Chain Monte Carlo methods are the most popular algorithms used for exact Bayesian inference p...
Volume computation is an algorithmic version of the fundamental geometric problem to figure out how ...
International audienceComputing the volume of a polytope in high dimensions is computationally chall...
International audienceComputing the volume of a high dimensional polytope is a fundamental problem i...
International audienceComputing the volume of a high dimensional polytope is a fundamental problem i...
Computing the volume of a high dimensional polytope is a fundamental problem in geometry, also conne...
Computing the volume of a polytope is an important longstudied question, with applications ranging f...
This manuscript introduces new random walks for the computation of densities of states, a central pr...
We experimentally study the fundamental problem of computing the volume of a convex polytope given a...
We tackle the problem of efficiently approximating the volume of convex polytopes, when these are gi...
International audienceWe experimentally study the fundamental problem of computing the volume of a c...
Ce manuscrit présente de nouvelles marches aléatoires pour le calcul des densités d'états, un problè...
AbstractA direct Monte Carlo method for volume estimation of star-shaped or convex domains is presen...
We experimentally study the fundamental problem of computing the volume of a convex polytope given a...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
Markov Chain Monte Carlo methods are the most popular algorithms used for exact Bayesian inference p...
Volume computation is an algorithmic version of the fundamental geometric problem to figure out how ...
International audienceComputing the volume of a polytope in high dimensions is computationally chall...
International audienceComputing the volume of a high dimensional polytope is a fundamental problem i...
International audienceComputing the volume of a high dimensional polytope is a fundamental problem i...
Computing the volume of a high dimensional polytope is a fundamental problem in geometry, also conne...
Computing the volume of a polytope is an important longstudied question, with applications ranging f...
This manuscript introduces new random walks for the computation of densities of states, a central pr...
We experimentally study the fundamental problem of computing the volume of a convex polytope given a...
We tackle the problem of efficiently approximating the volume of convex polytopes, when these are gi...
International audienceWe experimentally study the fundamental problem of computing the volume of a c...
Ce manuscrit présente de nouvelles marches aléatoires pour le calcul des densités d'états, un problè...
AbstractA direct Monte Carlo method for volume estimation of star-shaped or convex domains is presen...
We experimentally study the fundamental problem of computing the volume of a convex polytope given a...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
Markov Chain Monte Carlo methods are the most popular algorithms used for exact Bayesian inference p...
Volume computation is an algorithmic version of the fundamental geometric problem to figure out how ...