Publication: Beta-product Poisson-Dirichlet Processes
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Universidad Carlos III de Madrid. Departamento de Estadística
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UC3M Working papers. Statistics and Econometrics
11-23
11-23
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To cite this item, use the following identifier: https://hdl.handle.net/10016/12160
Abstract
Time series data may exhibit clustering over time and, in a multiple time series context,
the clustering behavior may differ across the series. This paper is motivated by the
Bayesian non--parametric modeling of the dependence between the clustering
structures and the distributions of different time series. We follow a Dirichlet process
mixture approach and introduce a new class of multivariate dependent Dirichlet
processes (DDP). The proposed DDP
are represented in terms of vector of stick-breaking processes with dependent weights.
The weights are beta random vectors that determine different and dependent clustering
effects along the dimension of the DDP vector. We discuss some theoretical properties
and provide an efficient Monte Carlo Markov Chain algorithm for posterior computation.
The effectiveness of the method is illustrated with a simulation study and an application
to the United States and the European Union industrial production indexes.