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Forecasting time series with multiple seasonal patterns
Authors:Phillip G Gould  Anne B Koehler  J Keith Ord  Ralph D Snyder  Rob J Hyndman  Farshid Vahid-Araghi
Institution:1. Monash University Accident Research Centre, Monash University, Melbourne, Australia;2. Department of Business Statistics and Econometrics, Monash University, Melbourne, Australia;3. Department of Decision Sciences and MIS, Miami University, Oxford, OH 45056, United States;4. McDonough School of Business, Georgetown University, Washington, DC 20057, United States;5. Faculty of Economics, Australian National University, Canberra, Australia
Abstract:A new approach is proposed for forecasting a time series with multiple seasonal patterns. A state space model is developed for the series using the innovations approach which enables us to develop explicit models for both additive and multiplicative seasonality. Parameter estimates may be obtained using methods from exponential smoothing. The proposed model is used to examine hourly and daily patterns in hourly data for both utility loads and traffic flows. Our formulation provides a model for several existing seasonal methods and also provides new options, which result in superior forecasting performance over a range of prediction horizons. In particular, seasonal components can be updated more frequently than once during a seasonal cycle. The approach is likely to be useful in a wide range of applications involving both high and low frequency data, and it handles missing values in a straightforward manner.
Keywords:Forecasting  Time series  Exponential smoothing  Seasonality  State space models
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