Convergence of Discount Time Series Dynamic Linear Models |
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Authors: | K. Triantafyllopoulos |
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Affiliation: | 1. Department of Probability and Statistics , University of Sheffield , Sheffield, UK k.triantafyllopoulos@sheffield.ac.uk |
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Abstract: | This article studies the limiting behavior of multiple discount time series dynamic linear models (TSDLMs). It is shown that, under mild conditions, all discount TSDLMs converge to the constant (time-invariant) TSDLM. In particular, the limiting posterior precision matrix of the superposition of multiple discount TSDLMs is explored. For non seasonal models, the elements of the limiting posterior precision of the states are given in a recurrence relationship, while for seasonal models the solution of a linear system provides the elements of the respective limiting precision matrix. The proposed methodology uses canonical Jordan forms and it is illustrated with a detailed example of simulated data featuring both trend and seasonal time series. |
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Keywords: | Bayesian forecasting Dynamic models Jordan canonical form Kalman filtering Riccati equation State space models Time series |
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