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The Ethereal
Regime-aware financial volatility forecasting via in-context learning
March 11, 2026 ยท Grace Period ยท ๐ ICLR 2026 Workshop
Authors
Saba Asaad, Shayan Mohajer Hamidi, Ali Bereyhi
arXiv ID
2603.10299
Category
cs.LG: Machine Learning
Citations
0
Venue
ICLR 2026 Workshop
Abstract
This work introduces a regime-aware in-context learning framework that leverages large language models (LLMs) for financial volatility forecasting under nonstationary market conditions. The proposed approach deploys pretrained LLMs to reason over historical volatility patterns and adjust their predictions without parameter fine-tuning. We develop an oracle-guided refinement procedure that constructs regime-aware demonstrations from training data. An LLM is then deployed as an in-context learner that predicts the next-step volatility from the input sequence using demonstrations sampled conditional to the estimated market label. This conditional sampling strategy enables the LLM to adapt its predictions to regime-dependent volatility dynamics through contextual reasoning alone. Experiments with multiple financial datasets show that the proposed regime-aware in-context learning framework outperforms both classical volatility forecasting approaches and direct one-shot learning, especially during high-volatility periods.
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