Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highlight these advances and their possible application in a range of domains beyond statistics. A full exposition of Markov chains and their use in Monte Carlo simulation for statistical inference and molecular dynamics is provided, with particular emphasis on methods based on Langevin diffusions. After this, geometric concepts in Markov chain Monte Carlo are introduced. A full derivation of the Langevin diffusion on a Riemannian manifold is given, together with a discussion of the appropriate Riemannian metric choice for different problems. A survey of applications is provided, and some open questions are discussed
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
Copyright and reuse: The Warwick Research Archive Portal (WRAP) makes this work of researchers of th...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Markov chain Monte Carlo methods have revolutionized mathematical computation and enabled statistica...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
This paper explores the application of methods from information geometry to the sequential Monte Car...
The general theme of this thesis is developing a better understanding of some Markov chain Monte Car...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
UnrestrictedSince we have the preliminary fact that the irreducible, aperiodic and reversible Markov...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
Copyright and reuse: The Warwick Research Archive Portal (WRAP) makes this work of researchers of th...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Recent work incorporating geometric ideas in Markov chain Monte Carlo is reviewed in order to highli...
Markov chain Monte Carlo methods have revolutionized mathematical computation and enabled statistica...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
This paper explores the application of methods from information geometry to the sequential Monte Car...
The general theme of this thesis is developing a better understanding of some Markov chain Monte Car...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
UnrestrictedSince we have the preliminary fact that the irreducible, aperiodic and reversible Markov...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
Markov chain Monte Carlo methods explicitly defined on the manifold of probability distributions hav...
Copyright and reuse: The Warwick Research Archive Portal (WRAP) makes this work of researchers of th...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...