|国家预印本平台
首页|Think Global, Act Local: Bayesian Causal Discovery with Language Models in Sequential Data

Think Global, Act Local: Bayesian Causal Discovery with Language Models in Sequential Data

Think Global, Act Local: Bayesian Causal Discovery with Language Models in Sequential Data

来源:Arxiv_logoArxiv
英文摘要

Causal discovery from observational data typically assumes full access to data and availability of domain experts. In practice, data often arrive in batches, and expert knowledge is scarce. Language Models (LMs) offer a surrogate but come with their own issues-hallucinations, inconsistencies, and bias. We present BLANCE (Bayesian LM-Augmented Causal Estimation)-a hybrid Bayesian framework that bridges these gaps by adaptively integrating sequential batch data with LM-derived noisy, expert knowledge while accounting for both data-induced and LM-induced biases. Our proposed representation shift from Directed Acyclic Graph (DAG) to Partial Ancestral Graph (PAG) accommodates ambiguities within a coherent Bayesian framework, allowing grounding the global LM knowledge in local observational data. To guide LM interaction, we use a sequential optimization scheme that adaptively queries the most informative edges. Across varied datasets, BLANCE outperforms prior work in structural accuracy and extends to Bayesian parameter estimation, showing robustness to LM noise.

Prakhar Verma、David Arbour、Sunav Choudhary、Harshita Chopra、Arno Solin、Atanu R. Sinha

计算技术、计算机技术

Prakhar Verma,David Arbour,Sunav Choudhary,Harshita Chopra,Arno Solin,Atanu R. Sinha.Think Global, Act Local: Bayesian Causal Discovery with Language Models in Sequential Data[EB/OL].(2025-06-19)[2025-07-09].https://arxiv.org/abs/2506.16234.点此复制

评论