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Forecasting with time series imaging

Abstract

Feature-based time series representations have attracted substantial attention in a wide range of time series analysis methods. Recently, the use of time series features for forecast model averaging has been an emerging research focus in the forecasting community. Nonetheless, most of the existing approaches depend on the manual choice of an appropriate set of features. Exploiting machine learning methods to automatically extract features from time series becomes crucially important in state-of-the-art time series analysis. In this paper, we introduce an automated approach to extract time series features based on images. Time series images are first transformed into recurrence images, from which local features can be extracted using computer vision algorithms. The extracted features are used for forecast model averaging. Our experiments show that forecasting based on automatically extracted features, with less human intervention and a more comprehensive view of the raw time series data yields comparable performances with the best methods proposed in the largest forecasting competition dataset (M4).

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