An infinite mixture of autoregressive models is developed. The unknown parameters in the mixture autoregressive model follow a mixture distribution, which is governed by a Dirichlet process prior. One main feature of our approach is the generalization of a finite mixture model by having the number of components unspecified. A Bayesian sampling scheme based on a weighted Chinese restaurant process is proposed to generate partitions of observations. Using the partitions, Bayesian prediction, while accounting for possible model uncertainty, determining the most probable number of mixture components, clustering of time series and outlier detection in time series, can be done. Numerical results from simulated and real data are presented to illus...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
In reality many time series are non-linear and non-gaussian. They show the characters like flat stre...
A natural Bayesian approach for mixture models with an unknown number of com-ponents is to take the ...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
In a Bayesian mixture model it is not necessary a priori to limit the number of components to be fin...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
In reality many time series are non-linear and non-gaussian. They show the characters like flat stre...
A natural Bayesian approach for mixture models with an unknown number of com-ponents is to take the ...
A Bayesian approach is presented for estimating a mixture of linear Gaussian stale space models. Suc...
A general Bayesian sampling method is developed that uses parallel chains to select betweenmodels an...
In this paper we propose a class of time-domain models for analyzing possibly nonstationary time ser...
A general Bayesian framework is introduced for mixture modelling and inference with real-valued time...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
In this paper we propose a clustering technique for discretely ob- served continuous-time models in ...
In a Bayesian mixture model it is not necessary a priori to limit the number of components to be fin...
In the past fifteen years there has been a dramatic increase of interest in Bayesian mixture models....
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
This dissertation explores a Bayesian nonparametric approach to mixture modeling and the use of the ...
Abstract only: Today’s data analysts and modellers are in the luxurious position of being able to mo...
This paper discusses the problem of fitting mixture models to input data. When an input stream is an...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
In reality many time series are non-linear and non-gaussian. They show the characters like flat stre...