Approximate Bayesian inference estimates descriptors of an intractable target distribution - in essence, an optimization problem within a family of distributions. For example, Langevin dynamics (LD) extracts asymptotically exact samples from a diffusion process because the time evolution of its marginal distributions constitutes a curve that minimizes the KL-divergence via steepest descent in the Wasserstein space. Parallel to LD, Stein variational gradient descent (SVGD) similarly minimizes the KL, albeit endowed with a novel Stein-Wasserstein distance, by deterministically transporting a set of particle samples, thus de-randomizes the stochastic diffusion process. We propose de-randomized kernel-based particle samplers to all diffusion-ba...
Trajectory inference aims at recovering the dynamics of a population from snapshots of its temporal ...
Consider a probability measure on a Hilbert space defined via its density with respect to a Gaussian...
This thesis covers an assortment of topics at the intersection of Bayesian nonparametrics and kernel...
Approximate Bayesian inference estimates descriptors of an intractable target distribution - in esse...
Bayesian inference problems require sampling or approximating high-dimensional probability distribut...
We propose a computational method (with acronym ALDI) for sampling from a given target distribution ...
AbstractIn this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic c...
In this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic causal mo...
This dissertation explores various aspects of sampling algorithms and stochastic optimization algori...
Stochastic gradient MCMC methods, such as stochastic gradient Langevin dynamics (SGLD), employ fast ...
Abstract. We describe a new MCMC method optimized for the sampling of probability measures on Hilber...
We propose an adaptively weighted stochastic gradient Langevin dynamics algorithm (SGLD), so-called ...
We propose a general purpose Bayesian inference algorithm for expensive likelihoods, replacing the s...
International audienceStochastic Gradient Langevin Dynamics (SGLD) has emerged as a key MCMC algorit...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
Trajectory inference aims at recovering the dynamics of a population from snapshots of its temporal ...
Consider a probability measure on a Hilbert space defined via its density with respect to a Gaussian...
This thesis covers an assortment of topics at the intersection of Bayesian nonparametrics and kernel...
Approximate Bayesian inference estimates descriptors of an intractable target distribution - in esse...
Bayesian inference problems require sampling or approximating high-dimensional probability distribut...
We propose a computational method (with acronym ALDI) for sampling from a given target distribution ...
AbstractIn this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic c...
In this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic causal mo...
This dissertation explores various aspects of sampling algorithms and stochastic optimization algori...
Stochastic gradient MCMC methods, such as stochastic gradient Langevin dynamics (SGLD), employ fast ...
Abstract. We describe a new MCMC method optimized for the sampling of probability measures on Hilber...
We propose an adaptively weighted stochastic gradient Langevin dynamics algorithm (SGLD), so-called ...
We propose a general purpose Bayesian inference algorithm for expensive likelihoods, replacing the s...
International audienceStochastic Gradient Langevin Dynamics (SGLD) has emerged as a key MCMC algorit...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
Trajectory inference aims at recovering the dynamics of a population from snapshots of its temporal ...
Consider a probability measure on a Hilbert space defined via its density with respect to a Gaussian...
This thesis covers an assortment of topics at the intersection of Bayesian nonparametrics and kernel...