We develop a new Bayesian modelling framework for the class of higher-order, variable-memory Markov chains, and introduce an associated collection of methodological tools for exact inference with discrete time series. We show that a version of the context tree weighting algorithm can compute the prior predictive likelihood exactly (averaged over both models and parameters), and two related algorithms are introduced, which identify the a posteriori most likely models and compute their exact posterior probabilities. All three algorithms are deterministic and have linear-time complexity. A family of variable-dimension Markov chain Monte Carlo samplers is also provided, facilitating further exploration of the posterior. The performance of the p...
We present a tutorial and new publicly available computational tools for variable length Markov chai...
This paper presents a simple method for exact online inference and approximate decision making, appl...
We present a Bayesian variable order Markov model that shares many similarities with predictive stat...
We present a simple, effective generalisation of variable order Markov models to full on-line Bayesi...
The identification of useful temporal dependence structure in discrete time series data is an import...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A new Bayesian modelling framework is introduced for piece-wise homogeneous variable-memory Markov c...
We present a simple, effective generalisation of variable order Markov models to full online Bayesia...
The Bayesian Context Trees (BCT) framework is a recently introduced, general collection of statistic...
A hierarchical Bayesian framework is introduced for developing rich mixture models for real-valued t...
Trees have long been used as a flexible way to build regression and classification models for comple...
Trees have long been used as a flexible way to build regression and classification models for comple...
We present a general framework for defining priors on model structure and sampling from the posterio...
Context tree models are Markov models where the conditioning is a string of previous symbols of vari...
We present a tutorial and new publicly available computational tools for variable length Markov chai...
This paper presents a simple method for exact online inference and approximate decision making, appl...
We present a Bayesian variable order Markov model that shares many similarities with predictive stat...
We present a simple, effective generalisation of variable order Markov models to full on-line Bayesi...
The identification of useful temporal dependence structure in discrete time series data is an import...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
A general hierarchical Bayesian framework is introduced for mixture modelling of real-valued time se...
A new Bayesian modelling framework is introduced for piece-wise homogeneous variable-memory Markov c...
We present a simple, effective generalisation of variable order Markov models to full online Bayesia...
The Bayesian Context Trees (BCT) framework is a recently introduced, general collection of statistic...
A hierarchical Bayesian framework is introduced for developing rich mixture models for real-valued t...
Trees have long been used as a flexible way to build regression and classification models for comple...
Trees have long been used as a flexible way to build regression and classification models for comple...
We present a general framework for defining priors on model structure and sampling from the posterio...
Context tree models are Markov models where the conditioning is a string of previous symbols of vari...
We present a tutorial and new publicly available computational tools for variable length Markov chai...
This paper presents a simple method for exact online inference and approximate decision making, appl...
We present a Bayesian variable order Markov model that shares many similarities with predictive stat...