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A fast and scalable ensemble of global models with long memory and data partitioning for the M5 forecasting competition
Abstract:This work presents key insights on the model development strategies used in our cross-learning-based retail demand forecast framework. The proposed framework outperforms state-of-the-art univariate models in the time series forecasting literature. It has achieved 17th position in the accuracy track of the M5 forecasting competition, which is among the top 1% of solutions.
Keywords:M5 forecasting competition  Global forecasting models  Sales demand forecasting  LightGBM models  Pooled Regression models
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