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Time Series Embedding and Combination of Forecasts: A Reinforcement Learning Approach

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arxiv 2508.20795 v1 pith:SXQ6GYNS submitted 2025-08-28 econ.EM

Time Series Embedding and Combination of Forecasts: A Reinforcement Learning Approach

classification econ.EM
keywords forecastingcombinationforecastspuzzleapproachframeworklearningreinforcement
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The forecasting combination puzzle is a well-known phenomenon in forecasting literature, stressing the challenge of outperforming the simple average when aggregating forecasts from diverse methods. This study proposes a Reinforcement Learning - based framework as a dynamic model selection approach to address this puzzle. Our framework is evaluated through extensive forecasting exercises using simulated and real data. Specifically, we analyze the M4 Competition dataset and the Survey of Professional Forecasters (SPF). This research introduces an adaptable methodology for selecting and combining forecasts under uncertainty, offering a promising advancement in resolving the forecasting combination puzzle.

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