Can LLMs Assist Expert Elicitation for Probabilistic Causal Modeling?
Journal:
arXiv
Published Date:
Apr 14, 2025
Abstract
Objective: This study investigates the potential of Large Language Models
(LLMs) as an alternative to human expert elicitation for extracting structured
causal knowledge and facilitating causal modeling in biometric and healthcare
applications.
Material and Methods: LLM-generated causal structures, specifically Bayesian
networks (BNs), were benchmarked against traditional statistical methods (e.g.,
Bayesian Information Criterion) using healthcare datasets. Validation
techniques included structural equation modeling (SEM) to verifying
relationships, and measures such as entropy, predictive accuracy, and
robustness to compare network structures.
Results and Discussion: LLM-generated BNs demonstrated lower entropy than
expert-elicited and statistically generated BNs, suggesting higher confidence
and precision in predictions. However, limitations such as contextual
constraints, hallucinated dependencies, and potential biases inherited from
training data require further investigation.
Conclusion: LLMs represent a novel frontier in expert elicitation for
probabilistic causal modeling, promising to improve transparency and reduce
uncertainty in the decision-making using such models.