<p>The advances in three related areas of state-space modeling, sequential Bayesian learning, and decision analysis are addressed, with the statistical challenges of scalability and associated dynamic sparsity. The key theme that ties the three areas is Bayesian model emulation: solving challenging analysis/computational problems using creative model emulators. This idea defines theoretical and applied advances in non-linear, non-Gaussian state-space modeling, dynamic sparsity, decision analysis and statistical computation, across linked contexts of multivariate time series and dynamic networks studies. Examples and applications in financial time series and portfolio analysis, macroeconomics and internet studies from computational advertisi...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
There is a one-to-one mapping between the conventional time series parameters of a third-order autor...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
While modern machine learning and deep learning seem to dominate the areas where scalability and mod...
Nonlinear state-space models are ubiquitous in modeling real-world dynamical systems. Sequential Mon...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
In this paper we describe the challenges of Bayesian computation in Finance. We show that empirical ...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
There is a one-to-one mapping between the conventional time series parameters of a third-order autor...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
This dissertation discusses the mathematical modeling of dynamical systems under uncertainty, Bayesi...
Many processes evolve over time and statistical models need to be adaptive to change. This thesis pr...
While modern machine learning and deep learning seem to dominate the areas where scalability and mod...
Nonlinear state-space models are ubiquitous in modeling real-world dynamical systems. Sequential Mon...
We harness the power of Bayesian emulation techniques, designed to aid the analysis of complex compu...
In this paper we describe the challenges of Bayesian computation in Finance. We show that empirical ...
Melding of information from observed data, computer simulations, and scientifically-driven mechanist...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
Probabilistic modeling lets us infer, predict and make decisions based on incomplete or noisy data. ...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
There is a one-to-one mapping between the conventional time series parameters of a third-order autor...