Modelling time series with season‐dependent autocorrelation structure |
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Authors: | Yorghos Tripodis Jeremy Penzer |
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Affiliation: | 1. Department of Biostatistics, Boston University, Boston, Massachusetts, USA;2. Department of Statistics, LSE, London, UK |
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Abstract: | ![]() Time series with season‐dependent autocorrelation structure are commonly modelled using periodic autoregressive moving average (PARMA) processes. In most applications, the moving average terms are excluded for ease of estimation. We propose a new class of periodic unobserved component models (PUCM). Parameter estimates for PUCM are readily interpreted; the estimated coefficients correspond to variances of the measurement noise and of the error terms in unobserved components. We show that PUCM have correlation structure equivalent to that of a periodic integrated moving average (PIMA) process. Results from practical applications indicate that our models provide a natural framework for series with periodic autocorrelation structure both in terms of interpretability and forecasting accuracy. Copyright © 2008 John Wiley & Sons, Ltd. |
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Keywords: | periodic autoregressive moving average models seasonality unobserved components structural time series model |
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