AbstractIn this technical note, we derive two MCMC (Markov chain Monte Carlo) samplers for dynamic causal models (DCMs). Specifically, we use (a) Hamiltonian MCMC (HMC-E) where sampling is simulated using Hamilton’s equation of motion and (b) Langevin Monte Carlo algorithm (LMC-R and LMC-E) that simulates the Langevin diffusion of samples using gradients either on a Euclidean (E) or on a Riemannian (R) manifold. While LMC-R requires minimal tuning, the implementation of HMC-E is heavily dependent on its tuning parameters. These parameters are therefore optimised by learning a Gaussian process model of the time-normalised sample correlation matrix. This allows one to formulate an objective function that balances tuning parameter exploration ...
We propose in this paper, STANLEY, a STochastic gradient ANisotropic LangEvin dYnamics, for sampling...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
In computational neuroscience, Neural Population Models (NPMs) are mechanistic models that describe ...
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...
AbstractIn this technical note we compare the performance of four gradient-free MCMC samplers (rando...
In this technical note we compare the performance of four gradient-free MCMC samplers (random walk M...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
This letter considers how a number of modern Markov chain Monte Carlo (MCMC) methods can be applied ...
Probabilistic parameter estimation in model fitting runs the gamut from maximum likelihood or maximu...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
Global fits of physics models require efficient methods for exploring high-dimensional and/or multim...
Markov chain Monte Carlo (MCMC) methods form a rich class of computational techniques that help its ...
The need to calibrate increasingly complex statistical models requires a persistent effort for furth...
Approximate Bayesian inference estimates descriptors of an intractable target distribution - in esse...
We propose in this paper, STANLEY, a STochastic gradient ANisotropic LangEvin dYnamics, for sampling...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
In computational neuroscience, Neural Population Models (NPMs) are mechanistic models that describe ...
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...
AbstractIn this technical note we compare the performance of four gradient-free MCMC samplers (rando...
In this technical note we compare the performance of four gradient-free MCMC samplers (random walk M...
This thesis presents novel Markov chain Monte Carlo methodology that exploits the natural representa...
This letter considers how a number of modern Markov chain Monte Carlo (MCMC) methods can be applied ...
Probabilistic parameter estimation in model fitting runs the gamut from maximum likelihood or maximu...
In generative modeling of neuroimaging data, such as dynamic causal modeling (DCM), one typically co...
Global fits of physics models require efficient methods for exploring high-dimensional and/or multim...
Markov chain Monte Carlo (MCMC) methods form a rich class of computational techniques that help its ...
The need to calibrate increasingly complex statistical models requires a persistent effort for furth...
Approximate Bayesian inference estimates descriptors of an intractable target distribution - in esse...
We propose in this paper, STANLEY, a STochastic gradient ANisotropic LangEvin dYnamics, for sampling...
The paper proposes Metropolis adjusted Langevin and Hamiltonian Monte Carlo sampling methods defined...
In computational neuroscience, Neural Population Models (NPMs) are mechanistic models that describe ...