Polarization of forecast densities: A new approach to time series classification |
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Affiliation: | 1. Deakin University, Elgar Road, Burwood, VIC 3125, Australia;2. Deakin University, Australia;3. Centre for Islamic Business and Finance Research, Nottingham University Business School, The University of Nottingham Malaysia Campus, Jalan Broga, Semenyih, Selangor Darul Ehsan 43000, Malaysia |
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Abstract: | Time series classification has been extensively explored in many fields of study. Most methods are based on the historical or current information extracted from data. However, if interest is in a specific future time period, methods that directly relate to forecasts of time series are much more appropriate. An approach to time series classification is proposed based on a polarization measure of forecast densities of time series. By fitting autoregressive models, forecast replicates of each time series are obtained via the bias-corrected bootstrap, and a stationarity correction is considered when necessary. Kernel estimators are then employed to approximate forecast densities, and discrepancies of forecast densities of pairs of time series are estimated by a polarization measure, which evaluates the extent to which two densities overlap. Following the distributional properties of the polarization measure, a discriminant rule and a clustering method are proposed to conduct the supervised and unsupervised classification, respectively. The proposed methodology is applied to both simulated and real data sets, and the results show desirable properties. |
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Keywords: | Time series classification Forecast densities Bias-corrected bootstrap Polarization measures |
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