The Forecast After the Forecast: A Post-Processing Shift in Time Series
Abstract
Time series forecasting has long been dominated by advances in model architecture, with recent progress driven by deep learning and hybrid statistical techniques. However, as forecasting models approach diminishing returns in accuracy, a critical yet underexplored opportunity emerges: the strategic use of post-processing. In this paper, we address the last-mile gap in time-series forecasting, which is to improve accuracy and uncertainty without retraining or modifying a deployed backbone. We propose $\delta$-Adapter, a lightweight, architecture-agnostic way to boost deployed time series forecasters without retraining. $\delta$-Adapter learns tiny, bounded modules at two interfaces: input nudging (soft edits to covariates) and output residual correction. We provide local descent guarantees, $O(\delta)$ drift bounds, and compositional stability for combined adapters. Meanwhile, it can act as a feature selector by learning a sparse, horizon-aware mask over inputs to select important features, thereby improving interpretability. In addition, it can also be used as a distribution calibrator to measure uncertainty. Thus, we introduce a Quantile Calibrator and a Conformal Corrector that together deliver calibrated, personalized intervals with finite-sample coverage. Our experiments across diverse backbones and datasets show that $\delta$-Adapter improves accuracy and calibration with negligible compute and no interface changes.
Cite
Text
Liang et al. "The Forecast After the Forecast: A Post-Processing Shift in Time Series." International Conference on Learning Representations, 2026.Markdown
[Liang et al. "The Forecast After the Forecast: A Post-Processing Shift in Time Series." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/liang2026iclr-forecast/)BibTeX
@inproceedings{liang2026iclr-forecast,
title = {{The Forecast After the Forecast: A Post-Processing Shift in Time Series}},
author = {Liang, Daojun and Li, Qi and Wang, Yinglong and Chen, Jing and Zhang, Hu and Cui, Xiaoxiao and Wang, Qizheng and Li, Shuo},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/liang2026iclr-forecast/}
}