There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piecewise-deterministic Markov processes. However existing algorithms can only be used if the target distribution of interest is differentiable everywhere. The key to adapting these algorithms so that they can sample from to densities with discontinuities is defining appropriate dynamics for the process when it hits a discontinuity. We present a simple condition for the transition of the process at a discontinuity which can be used to extend any existing sampler for smooth densities, and give specific choices for this transition which work with popular algorithms such as the Bouncy Particle Sampler, the Coordinate Sampler and the Zig-Zag Process. ...
New sampling algorithms based on simulating continuous-time stochastic processes called piecewise de...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piece...
Markov Chain Monte Carlo methods are the most popular algorithms used for exact Bayesian inference p...
Recent interest in a class of Markov chain Monte Carlo schemes based on continuous-time piecewise-de...
Novel Monte Carlo methods to generate samples from a target distribution, such as a posterior from a...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
This thesis studies methods to improve the applicability and the performance of Markov Chain Monte C...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
The Bouncy Particle sampler (BPS) and the Zig-Zag sampler (ZZS) are continuous time, non-reversible ...
Piecewise Deterministic Monte Carlo algorithms enable simulation from a posterior distribution, whil...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
New sampling algorithms based on simulating continuous-time stochastic processes called piecewise de...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
There has been substantial interest in developing Markov chain Monte Carlo algorithms based on piece...
Markov Chain Monte Carlo methods are the most popular algorithms used for exact Bayesian inference p...
Recent interest in a class of Markov chain Monte Carlo schemes based on continuous-time piecewise-de...
Novel Monte Carlo methods to generate samples from a target distribution, such as a posterior from a...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
This thesis studies methods to improve the applicability and the performance of Markov Chain Monte C...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
The Bouncy Particle sampler (BPS) and the Zig-Zag sampler (ZZS) are continuous time, non-reversible ...
Piecewise Deterministic Monte Carlo algorithms enable simulation from a posterior distribution, whil...
A new class of Markov chain Monte Carlo (MCMC) algorithms, based on simulating piecewise determinist...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...
New sampling algorithms based on simulating continuous-time stochastic processes called piecewise de...
Many Markov chain Monte Carlo techniques currently available rely on discrete-time reversible Markov...
We construct a new class of efficient Monte Carlo methods based on continuous-time piecewise determi...