Linear Gaussian state-space models are ubiquitous in signal processing, and an important procedure is that of estimating system parameters from observed data. Rather than making a single point estimate, it is often desirable to conduct Bayesian learning, in which the entire posterior distribution of the unknown parameters is sought. This can be achieved using Markov chain Monte Carlo. On some occasions it is possible to deduce the form of the unknown system matrices in terms of a small number of scalar parameters, by considering the underlying physical processes involved. Here we study the case where this is not possible, and the entire matrices must be treated as unknowns. An efficient Gibbs sampling algorithm exists for the basic formulat...
The paper deals with the problem of reconstructing a continuous one-dimensional function from discre...
Introduction Linear Gaussian state space models are used extensively, with unknown parameters usuall...
In this thesis, we propose some Bayesian approaches to the identificationof structured dynamical sys...
Gaussian processes allow for flexible specification of prior assumptions of unknown dynamics in stat...
State-space models are successfully used in many areas of science, engineering and economics to mode...
State-space models are successfully used in many areas of science, engineer-ing and economics to mod...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
This work addresses the problem of estimating the optimal value function in a Markov Decision Proces...
Adding changepoints to a linear Gaussian state space model, such that it can switch between multiple...
This work addresses the problem of estimating the optimal value function in a MarkovDecision Process...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Bayesian learning in undirected graphical models—computing posterior distributions over parameters a...
The paper deals with the problem of reconstructing a continuous one-dimensional function from discre...
Introduction Linear Gaussian state space models are used extensively, with unknown parameters usuall...
In this thesis, we propose some Bayesian approaches to the identificationof structured dynamical sys...
Gaussian processes allow for flexible specification of prior assumptions of unknown dynamics in stat...
State-space models are successfully used in many areas of science, engineering and economics to mode...
State-space models are successfully used in many areas of science, engineer-ing and economics to mod...
We describe an ecient variational Bayesian approximation scheme for model structure selec- tion in L...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
This work addresses the problem of estimating the optimal value function in a Markov Decision Proces...
Adding changepoints to a linear Gaussian state space model, such that it can switch between multiple...
This work addresses the problem of estimating the optimal value function in a MarkovDecision Process...
Abstract: Gaussian process state-space models (GP-SSMs) are a very flexible family of models of nonl...
Abstract. Gaussian processes are a natural way of dening prior distributions over func-tions of one ...
In this paper we introduce a novel method for linear system identification with quantized output dat...
Bayesian learning in undirected graphical models—computing posterior distributions over parameters a...
The paper deals with the problem of reconstructing a continuous one-dimensional function from discre...
Introduction Linear Gaussian state space models are used extensively, with unknown parameters usuall...
In this thesis, we propose some Bayesian approaches to the identificationof structured dynamical sys...