AI RESEARCH
Relational Probing: LM-to-Graph Adaptation for Financial Prediction
arXiv CS.CL
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ArXi:2604.10212v1 Announce Type: new Language models can be used to identify relationships between financial entities in text. However, while structured output mechanisms exist, prompting-based pipelines still incur autoregressive decoding costs and decouple graph construction from downstream optimization. We propose \emph{Relational Probing}, which replaces the standard language-model head with a relation head that induces a relational graph directly from language-model hidden states and is trained jointly with the downstream task model for stock-trend prediction.