Multiple time series data may exhibit clustering over time and the clustering effect may change across different series. This paper is motivated by the Bayesian non–parametric modelling of the dependence between clustering effects in multiple time series analysis. We follow a Dirichlet process mixture approach and define a new class of multivariate dependent Pitman-Yor processes (DPY). The proposed DPY are represented in terms of a vector of stickbreaking processes which determines dependent clustering structures in the time series. We follow a hierarchical specification of the DPY base measure to accounts for various degrees of information pooling across the series. We discuss some theoretical properties of the DPY and use them to define ...
Summary. We propose a Bayesian nonparametric approach to the problem of jointly modeling multiple re...
Bayesian nonparametric mixture models are often employed for modelling complex data. While these mod...
In this paper we propose a clustering technique for discretely observed continuous-time models in o...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Time series data may exhibit clustering over time and, in a multiple time series context, the clust...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
Most of the Bayesian nonparametric models for non-exchangeable data that are used in applications ar...
Most of the Bayesian nonparametric models for non-exchangeable data that are used in applications ar...
© 1979-2012 IEEE. Bayesian nonparametrics are a class of probabilistic models in which the model siz...
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
Summary. We propose a Bayesian nonparametric approach to the problem of jointly modeling multiple re...
Bayesian nonparametric mixture models are often employed for modelling complex data. While these mod...
In this paper we propose a clustering technique for discretely observed continuous-time models in o...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Multiple time series data may exhibit clustering over time and the clustering effect may change acro...
Time series data may exhibit clustering over time and, in a multiple time series context, the clust...
No abstract availableIn Bayesian Statistics the modeling of data with complex dependence structures ...
Most of the Bayesian nonparametric models for non-exchangeable data that are used in applications ar...
Most of the Bayesian nonparametric models for non-exchangeable data that are used in applications ar...
© 1979-2012 IEEE. Bayesian nonparametrics are a class of probabilistic models in which the model siz...
Bayesian nonparametric mixture models are common for modeling complex data. While these models are w...
Summary. We propose a Bayesian nonparametric approach to the problem of jointly modeling multiple re...
Bayesian nonparametric mixture models are often employed for modelling complex data. While these mod...
In this paper we propose a clustering technique for discretely observed continuous-time models in o...