A hierarchical Bayesian framework is introduced for developing rich mixture models for real-valued time series, along with a collection of effective tools for learning and inference. At the top level, meaningful discrete states are identified as appropriately quantised values of some of the most recent samples. This collection of observable states is described as a discrete context-tree model. Then, at the bottom level, a different, arbitrary model for real-valued time series - a base model - is associated with each state. This defines a very general framework that can be used in conjunction with any existing model class to build flexible and interpretable mixture models. We call this the Bayesian Context Trees State Space Model, or the BCT...
One desirable property of machine learning algorithms is the ability to balance the number of p...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
The Bayesian Context Trees (BCT) framework is a recently introduced, general collection of statistic...
A new Bayesian modelling framework is introduced for piece-wise homogeneous variable-memory Markov c...
We develop a new Bayesian modelling framework for the class of higher-order, variable-memory Markov ...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
"'What's going to happen next?' Time series data hold the answers, and Bayesian methods represent th...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
155 pagesThis work explores modeling and forecasting of time series data using a Bayesian state-spac...
We present a simple, effective generalisation of variable order Markov models to full online Bayesia...
This thesis explores the use of State-Space models in Time Series Analysis and Forecasting, with par...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
One desirable property of machine learning algorithms is the ability to balance the number of p...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
The Bayesian Context Trees (BCT) framework is a recently introduced, general collection of statistic...
A new Bayesian modelling framework is introduced for piece-wise homogeneous variable-memory Markov c...
We develop a new Bayesian modelling framework for the class of higher-order, variable-memory Markov ...
This thesis is a collection of three self-contained essays on using sequential Bayesian methods toge...
"'What's going to happen next?' Time series data hold the answers, and Bayesian methods represent th...
I overview recent research advances in Bayesian state-space modeling of multivariate time series. A ...
155 pagesThis work explores modeling and forecasting of time series data using a Bayesian state-spac...
We present a simple, effective generalisation of variable order Markov models to full online Bayesia...
This thesis explores the use of State-Space models in Time Series Analysis and Forecasting, with par...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
One desirable property of machine learning algorithms is the ability to balance the number of p...
Bayesian machine learning has gained tremendous attention in the machine learning community over the...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...