AI RESEARCH
Bridging the Last Mile of Time Series Forecasting with LLM Agents
arXiv CS.AI
•
ArXi:2606.02497v1 Announce Type: new 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.