PhD ThesisWith the advent of Big Data and the Internet of Things, data streams are ubiquitous, increasing the demand for real-time inference on sequential data at low computational cost. Inference for streaming time-series is tightly coupled with the problem of Bayesian online state and parameter inference. In this thesis we will focus mainly on Dynamic Generalised Linear Models, the class of models often chosen to model continuous and discrete time-series data. We will look at methods which solve the problem of estimating jointly states and parameters, both in online and offline scenarios. For the online scenario, when the parameters are known, we will look at the Kalman Filter and Sequential Monte Carlo methods (SMC) which provide...
We consider the on-line Bayesian analysis of data by using a hidden Markov model, where inference is...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
This thesis consists of two papers studying online inference in general hidden Markov models using s...
We consider Bayesian online static parameter estimation for state-space models. This is a very impor...
The particle filter is a powerful filtering technique that is able to handle a broad scope of nonlin...
Online joint parameter and state estimation is a core problem for temporal models.Most existing meth...
Recent work demonstrates that coupling Bayesian computational statistics methods with dynamic models...
Recent work demonstrates that coupling Bayesian computational statistics methods with dynamic models...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
We address the problem of approximating the posterior probability distribution of the fixed paramete...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
Nonlinear state-space models are ubiquitous in modeling real-world dynamical systems. Sequential Mon...
International audienceBayesian filtering aims at estimating sequentially a hidden process from an ob...
International audienceBayesian filtering aims at estimating sequentially a hidden process from an ob...
Abstract. Nonlinear non-Gaussian state-space models are ubiquitous in statistics, econometrics, info...
We consider the on-line Bayesian analysis of data by using a hidden Markov model, where inference is...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
This thesis consists of two papers studying online inference in general hidden Markov models using s...
We consider Bayesian online static parameter estimation for state-space models. This is a very impor...
The particle filter is a powerful filtering technique that is able to handle a broad scope of nonlin...
Online joint parameter and state estimation is a core problem for temporal models.Most existing meth...
Recent work demonstrates that coupling Bayesian computational statistics methods with dynamic models...
Recent work demonstrates that coupling Bayesian computational statistics methods with dynamic models...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
We address the problem of approximating the posterior probability distribution of the fixed paramete...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
Nonlinear state-space models are ubiquitous in modeling real-world dynamical systems. Sequential Mon...
International audienceBayesian filtering aims at estimating sequentially a hidden process from an ob...
International audienceBayesian filtering aims at estimating sequentially a hidden process from an ob...
Abstract. Nonlinear non-Gaussian state-space models are ubiquitous in statistics, econometrics, info...
We consider the on-line Bayesian analysis of data by using a hidden Markov model, where inference is...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
This thesis consists of two papers studying online inference in general hidden Markov models using s...