The estimation problem of stochastic nonlinear parametric models is recognized to be very challenging due to the intractability of the likelihood function. Recently, several methods have been developed to approximate the maximum likelihood estimator and the optimal mean-square error predictor using Monte Carlo methods. Albeit asymptotically optimal, these methods come with several computational challenges and fundamental limitations. The contributions of this thesis can be divided into two main parts. In the first part, approximate solutions to the maximum likelihood problem are explored. Both analytical and numerical approaches, based on the expectation-maximization algorithm and the quasi-Newton algorithm, are considered. While analytic a...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
AbstractIn this paper, we describe a general variational Bayesian approach for approximate inference...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
AbstractIn this paper, we describe a general variational Bayesian approach for approximate inference...
The estimation problem of stochastic nonlinear parametric models is recognized to be very challengin...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The estimation problem for stochastic parametric nonlinear dynamical models is recognized to be chal...
The first part of the paper examines the asymptotic properties of linear prediction error method est...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Nonlinear stochastic parametric models are widely used in various fields. However, for these models,...
Stochastic nonlinear systems are a specific class of nonlinear systems where unknown disturbances af...
In this dissertation, we present our work on automating discovery of governing equations for stochas...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Transferring information from data to models is crucial to many scientific disciplines. Typically, t...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
The recent Predictive Linear Gaussian model (or PLG) improves upon traditional linear dynamical syst...
Numbers are present everywhere, and when they are collected and recorded we refer to them as data. M...
AbstractIn this paper, we describe a general variational Bayesian approach for approximate inference...