Litcius/Paper detail

Large language models for causal hypothesis generation in science

Kai-Hendrik Cohrs, Emiliano Díaz, Vasileios Sitokonstantinou, Gherardo Varando, Gustau Camps‐Valls

2024Machine Learning Science and Technology14 citationsDOIOpen Access PDF

Abstract

Abstract Towards the goal of understanding the causal structure underlying complex systems—such as the Earth, the climate, or the brain—integrating Large language models (LLMs) with data-driven and domain-expertise-driven approaches has the potential to become a game-changer, especially in data and expertise-limited scenarios. Debates persist around LLMs’ causal reasoning capacities. However, rather than engaging in philosophical debates, we propose integrating LLMs into a scientific framework for causal hypothesis generation alongside expert knowledge and data. Our goals include formalizing LLMs as probabilistic imperfect experts, developing adaptive methods for causal hypothesis generation, and establishing universal benchmarks for comprehensive comparisons. Specifically, we introduce a spectrum of integration methods for experts, LLMs, and data-driven approaches. We review existing approaches for causal hypothesis generation and classify them within this spectrum. As an example, our hybrid (LLM + data) causal discovery algorithm illustrates ways for deeper integration. Characterizing imperfect experts along dimensions such as (1) reliability, (2) consistency, (3) uncertainty, and (4) content vs. reasoning are emphasized for developing adaptable methods. Lastly, we stress the importance of model-agnostic benchmarks.

Topics & Concepts

Computer scienceLinguisticsPsychologyNatural language processingPhilosophyTopic ModelingBiomedical Text Mining and OntologiesAdvanced Text Analysis Techniques