A general Bayesian framework is introduced for mixture modelling and inference with real-valued time series. At the top level, the state space is partitioned via the choice of a discrete context tree, so that the resulting partition depends on the values of some of the most recent samples. At the bottom level, a different model is associated with each region of the partition. This defines a very rich and flexible class of mixture models, for which we provide algorithms that allow for efficient, exact Bayesian inference. In particular, we show that the maximum a posteriori probability (MAP) model (including the relevant MAP context tree partition) can be precisely identified, along with its exact posterior probability. The utility of this ge...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
The paper deals with the problem of unsupervised learning with structured data, proposing a mixture ...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A hierarchical Bayesian framework is introduced for developing rich mixture models for real-valued t...
We develop a new Bayesian modelling framework for the class of higher-order, variable-memory Markov ...
The Context-Tree-Weighting algorithm is an example of an computationally efficient way to compute a ...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
An infinite mixture of autoregressive models is developed. The unknown parameters in the mixture aut...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
Abstract: We address the problem of model comparison and model mixing in time series using the appro...
We present a simple, effective generalisation of variable order Markov models to full on-line Bayesi...
A novel class of models for multivariate time series is presented. We consider hier-archical mixture...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
A Bayesian-based methodology is presented which automatically penalizes overcomplex models being fit...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
The paper deals with the problem of unsupervised learning with structured data, proposing a mixture ...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A hierarchical Bayesian framework is introduced for developing rich mixture models for real-valued t...
We develop a new Bayesian modelling framework for the class of higher-order, variable-memory Markov ...
The Context-Tree-Weighting algorithm is an example of an computationally efficient way to compute a ...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
An infinite mixture of autoregressive models is developed. The unknown parameters in the mixture aut...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
Abstract: We address the problem of model comparison and model mixing in time series using the appro...
We present a simple, effective generalisation of variable order Markov models to full on-line Bayesi...
A novel class of models for multivariate time series is presented. We consider hier-archical mixture...
<p>Dynamic models, also termed state space models, comprise an extremely rich model class for time s...
A Bayesian-based methodology is presented which automatically penalizes overcomplex models being fit...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
The paper deals with the problem of unsupervised learning with structured data, proposing a mixture ...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...