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Investigating the accuracy of cross-learning time series forecasting methods
Authors:Artemios-Anargyros Semenoglou  Evangelos Spiliotis  Spyros Makridakis  Vassilios Assimakopoulos
Abstract:The M4 competition identified innovative forecasting methods, advancing the theory and practice of forecasting. One of the most promising innovations of M4 was the utilization of cross-learning approaches that allow models to learn from multiple series how to accurately predict individual ones. In this paper, we investigate the potential of cross-learning by developing various neural network models that adopt such an approach, and we compare their accuracy to that of traditional models that are trained in a series-by-series fashion. Our empirical evaluation, which is based on the M4 monthly data, confirms that cross-learning is a promising alternative to traditional forecasting, at least when appropriate strategies for extracting information from large, diverse time series data sets are considered. Ways of combining traditional with cross-learning methods are also examined in order to initiate further research in the field.
Keywords:Time series  Cross-learning  Features  Neural networks  M4 competition
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