Beyond Extrapolation: Knowledge Utilization Paradigm with Bidirectional Inspiration for Time Series Forecasting
Liu Chong, Yingjie Zhou, Hao Li, Pengyang Wang, Qingsong Wen, Ce Zhu

TL;DR
This paper introduces KUP-BI, a new paradigm for time series forecasting that leverages a proxy for post-target continuation learned from historical data to improve prediction accuracy.
Contribution
It proposes a novel bidirectional forecasting framework that distills continuation knowledge from training data and integrates it into existing models.
Findings
KUP-BI consistently improves forecasting accuracy across six datasets.
The method introduces minimal additional computational overhead.
It provides a structured inductive bias for better exploitation of continuation patterns.
Abstract
Time-series forecasting is critical in various scenarios, such as energy, transportation, and public health. However, most existing forecasters rely primarily on one-way inference, \textit{i.e.}, mapping \textbf{history} to \textbf{target}, and overlook the structural information provided by a revised natural chain (``\textbf{history} (model input) -- \textbf{target} (ground-truth output) -- \textbf{post-target continuation}''). The post-target continuation records how trajectories evolve after the target, which can help stabilize forecasting, but it is not observable at inference time. In this work, we aim to obtain an approximate proxy of the post-target continuation for the current input, providing structural knowledge for bidirectional forecasting. This idea is instantiated as KUP-BI (Knowledge Utilization Paradigm with Bidirectional Inspiration), a new time-series modeling paradigm…
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