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A Bayesian nonparametric Markovian model for non-stationary time series

Authors :
DeYoreo, Maria
DeYoreo, Maria
Kottas, Athanasios
DeYoreo, Maria
DeYoreo, Maria
Kottas, Athanasios
Source :
STATISTICS AND COMPUTING; vol 27, iss 6, 1525-1538; 0960-3174
Publication Year :
2017

Abstract

Stationary time series models built from parametric distributions are, in general, limited in scope due to the assumptions imposed on the residual distribution and autoregression relationship. We present a modeling approach for univariate time series data, which makes no assumptions of stationarity, and can accommodate complex dynamics and capture nonstandard distributions. The model for the transition density arises from the conditional distribution implied by a Bayesian nonparametric mixture of bivariate normals. This implies a flexible autoregressive form for the conditional transition density, defining a time-homogeneous, nonstationary, Markovian model for real-valued data indexed in discrete-time. To obtain a more computationally tractable algorithm for posterior inference, we utilize a square-root-free Cholesky decomposition of the mixture kernel covariance matrix. Results from simulated data suggest the model is able to recover challenging transition and predictive densities. We also illustrate the model on time intervals between eruptions of the Old Faithful geyser. Extensions to accommodate higher order structure and to develop a state-space model are also discussed.

Details

Database :
OAIster
Journal :
STATISTICS AND COMPUTING; vol 27, iss 6, 1525-1538; 0960-3174
Notes :
application/pdf, STATISTICS AND COMPUTING vol 27, iss 6, 1525-1538 0960-3174
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287421205
Document Type :
Electronic Resource