Mind the Shift: Decoding Monetary Policy Stance from FOMC Statements with Large Language Models
arXiv cs.CL / 3/17/2026
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Key Points
- Introduces Delta-Consistent Scoring (DCS), an annotation-free framework that maps frozen LLM representations to continuous hawkish–dovish stance scores for FOMC statements.
- DCS jointly models absolute stance and relative inter-meeting shifts by using consecutive meetings as self-supervision to learn a temporally coherent stance trajectory.
- It does not rely on manual hawkish–dovish labels, enabling scalable stance extraction without labeled data.
- Across four LLM backbones, DCS outperforms supervised probes and LLM-as-judge baselines, achieving up to 71.1% accuracy on sentence-level classification.
- The resulting meeting-level scores correlate with inflation indicators and are associated with Treasury yield movements, suggesting the method captures economically meaningful policy signals.
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