Dynamic Temporal Reconciliation by Reinforcement learning
Himanshi Charotia, Abhishek Garg, Gaurav Dhama, Naman Maheshwari

TL;DR
This paper introduces a dynamic temporal reconciliation method using reinforcement learning to improve long-term forecasts by adaptively integrating high and low frequency data, especially when data is incomplete or scenarios change rapidly.
Contribution
It formulates the reconciliation problem as a Markov Decision Process and applies Time Differenced Reinforcement Learning to enhance forecast accuracy under data limitations.
Findings
Significant improvement in long-term forecast accuracy.
Effective use of high frequency data to inform low frequency forecasts.
Demonstrated adaptability in scenarios with partial data and rapid changes.
Abstract
Planning based on long and short term time series forecasts is a common practice across many industries. In this context, temporal aggregation and reconciliation techniques have been useful in improving forecasts, reducing model uncertainty, and providing a coherent forecast across different time horizons. However, an underlying assumption spanning all these techniques is the complete availability of data across all levels of the temporal hierarchy, while this offers mathematical convenience but most of the time low frequency data is partially completed and it is not available while forecasting. On the other hand, high frequency data can significantly change in a scenario like the COVID pandemic and this change can be used to improve forecasts that will otherwise significantly diverge from long term actuals. We propose a dynamic reconciliation method whereby we formulate the problem of…
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Taxonomy
TopicsForecasting Techniques and Applications · Meteorological Phenomena and Simulations · Energy Load and Power Forecasting
