<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time series analysis. This dissertation focuses on building state space models for a variety of contexts and computationally efficient methods for Bayesian inference for simultaneous estimation of latent states and unknown fixed parameters.</p><p>Chapter 1 introduces state space models and methods of inference in these models. Chapter 2 describes a novel method for jointly sampling the entire latent state vector in a nonlinear Gaussian state space model using a computationally efficient adaptive mixture modeling procedure. This method is embedded in an overall Markov chain Monte Carlo algorithm for estimating fixed parameters as well as states. In ...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
This thesis is concerned with the stochastic modeling of and inference for switching biological syst...
textabstractThis paper demonstrates that the class of conditionally linear and Gaussian state-space ...
We introduce state-space models where the functionals of the observational and the evolu-tionary equ...
We describe a strategy for Markov chain Monte Carlo analysis of nonlinear, non-Gaussian state-space ...
State space model is a class of models where the observations are driven by underlying stochastic pr...
Non-linear state space models are a widely-used class of models for biological, economic, and physic...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
<p>The advances in three related areas of state-space modeling, sequential Bayesian learning, and de...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
A new methodology for Bayesian inference of stochastic dynamical models is devel-oped. The methodolo...
In time series analysis, latent factors are often introduced to model the heterogeneous time evoluti...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
This thesis is concerned with the stochastic modeling of and inference for switching biological syst...
textabstractThis paper demonstrates that the class of conditionally linear and Gaussian state-space ...
We introduce state-space models where the functionals of the observational and the evolu-tionary equ...
We describe a strategy for Markov chain Monte Carlo analysis of nonlinear, non-Gaussian state-space ...
State space model is a class of models where the observations are driven by underlying stochastic pr...
Non-linear state space models are a widely-used class of models for biological, economic, and physic...
This thesis is concerned with developing efficient MCMC (Markov Chain Monte Carlo) techniques for no...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
<p>The advances in three related areas of state-space modeling, sequential Bayesian learning, and de...
In the present paper we study switching state space models from a Bayesian point of view. For estima...
This thesis provides a set of novel Monte Carlo methods to perform Bayesian inference, with an empha...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
A new methodology for Bayesian inference of stochastic dynamical models is devel-oped. The methodolo...
In time series analysis, latent factors are often introduced to model the heterogeneous time evoluti...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
This thesis is concerned with the stochastic modeling of and inference for switching biological syst...
textabstractThis paper demonstrates that the class of conditionally linear and Gaussian state-space ...