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Hauptverfasser: Liao, Yuhua, Wang, Zetian, Nie, Qiangqiang, Zhang, Zhenhua
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2606.02497
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author Liao, Yuhua
Wang, Zetian
Nie, Qiangqiang
Zhang, Zhenhua
author_facet Liao, Yuhua
Wang, Zetian
Nie, Qiangqiang
Zhang, Zhenhua
contents Time series forecasting has advanced rapidly, especially with the emergence of foundation models that show strong zero-shot performance on numerical extrapolation. However, in real-world forecasting settings, a statistically plausible baseline is rarely the final forecast used in practice. Before a forecast becomes decision-ready, it often needs to be revised using weakly structured business context such as holiday effects, campaign plans, external events, historical analogs, and expert feedback. This practical stage remains underexplored in the forecasting literature. In this paper, we formulate this stage as the \textbf{last-mile forecasting} problem and present an LLM-agent framework that sits on top of a forecasting backbone. Our system maintains a unified forecast workspace, invokes tools to retrieve contextual evidence, and converts reasoning trajectories into explicit forecast revision actions under structural safety constraints. It also supports long-horizon forecasting through map-reduce-style decomposition and post-hoc reflection through a memory bank. The resulting system is designed to be controllable and auditable. Through real-world case studies, we show how LLM agents can bridge the gap between statistical prediction and business-ready forecasting.
format Preprint
id arxiv_https___arxiv_org_abs_2606_02497
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Bridging the Last Mile of Time Series Forecasting with LLM Agents
Liao, Yuhua
Wang, Zetian
Nie, Qiangqiang
Zhang, Zhenhua
Artificial Intelligence
Time series forecasting has advanced rapidly, especially with the emergence of foundation models that show strong zero-shot performance on numerical extrapolation. However, in real-world forecasting settings, a statistically plausible baseline is rarely the final forecast used in practice. Before a forecast becomes decision-ready, it often needs to be revised using weakly structured business context such as holiday effects, campaign plans, external events, historical analogs, and expert feedback. This practical stage remains underexplored in the forecasting literature. In this paper, we formulate this stage as the \textbf{last-mile forecasting} problem and present an LLM-agent framework that sits on top of a forecasting backbone. Our system maintains a unified forecast workspace, invokes tools to retrieve contextual evidence, and converts reasoning trajectories into explicit forecast revision actions under structural safety constraints. It also supports long-horizon forecasting through map-reduce-style decomposition and post-hoc reflection through a memory bank. The resulting system is designed to be controllable and auditable. Through real-world case studies, we show how LLM agents can bridge the gap between statistical prediction and business-ready forecasting.
title Bridging the Last Mile of Time Series Forecasting with LLM Agents
topic Artificial Intelligence
url https://arxiv.org/abs/2606.02497