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Bayesian Concept Bottleneck Models with LLM Priors

Machine Learning 2025-12-05 v3 Artificial Intelligence Machine Learning

Abstract

Concept Bottleneck Models (CBMs) have been proposed as a compromise between white-box and black-box models, aiming to achieve interpretability without sacrificing accuracy. The standard training procedure for CBMs is to predefine a candidate set of human-interpretable concepts, extract their values from the training data, and identify a sparse subset as inputs to a transparent prediction model. However, such approaches are often hampered by the tradeoff between exploring a sufficiently large set of concepts versus controlling the cost of obtaining concept extractions, resulting in a large interpretability-accuracy tradeoff. This work investigates a novel approach that sidesteps these challenges: BC-LLM iteratively searches over a potentially infinite set of concepts within a Bayesian framework, in which Large Language Models (LLMs) serve as both a concept extraction mechanism and prior. Even though LLMs can be miscalibrated and hallucinate, we prove that BC-LLM can provide rigorous statistical inference and uncertainty quantification. Across image, text, and tabular datasets, BC-LLM outperforms interpretable baselines and even black-box models in certain settings, converges more rapidly towards relevant concepts, and is more robust to out-of-distribution samples.

Keywords

Cite

@article{arxiv.2410.15555,
  title  = {Bayesian Concept Bottleneck Models with LLM Priors},
  author = {Jean Feng and Avni Kothari and Luke Zier and Chandan Singh and Yan Shuo Tan},
  journal= {arXiv preprint arXiv:2410.15555},
  year   = {2025}
}

Comments

2025 Conference on Neural Information Processing Systems

R2 v1 2026-06-28T19:28:58.764Z