From Language to Causality: Extracting Causal Relations from Large Language Models
| Marosi, Márk | ||
| Váradi, Kristóf | ||
| Antal, Péter | ||
| 2025-05-22T11:44:48Z | ||
| 2025-05-22T11:44:48Z | ||
| 2025-05-23 | ||
AbstractThis research introduces a novel framework for constructing causal networks by leveraging the causal reasoning abilities of multiple Large Language Models (LLMs). We instruct LLMs to extract explicit causal links from their internal knowledge representations regarding specific topics. We explore methods for consolidating these graphs, addressing conflicts, and determining the strength and directionality of causal links. Evaluated across various domains using the Qwen 2.5 model family (0.5B to 14B parameters), the framework demonstrates the ability of language models to generate meaningful causal networks from complex queries. Our findings suggest that fusing causal knowledge from multiple LLMs significantly enhances causal discovery from natural language, though practical application benefits from human oversight and domain expertise to ensure accuracy and reliability. We also highlight the potential of integrating probabilistic approaches to quantify uncertainty within the extracted causal relationships. | ||
| http://hdl.handle.net/10890/60587 | ||
| en | ||
| From Language to Causality: Extracting Causal Relations from Large Language Models | ||
| könyvfejezet | ||
| Open access | ||
| Budapest University of Technology and Economics, Department of Artificial Intelligence and Systems Enginering | ||
| 2025.02.03-2025.02.04 | ||
| Budapest, Hungary | ||
| 32nd Minisymposium of the Department of Artificial Intelligence and Systems Engineering | ||
| 2025-05-23 | ||
| 978-963-421-989-7 | ||
| Budapest University of Technology and Economics, Department of Artificial Intelligence and Systems Engineering | ||
| Budapest, Hungary | ||
| Proceedings of the 32nd Minisymposium | ||
| Department of Artificial Intelligence and Systems Engineering | ||
| Post print | ||
| Faculty of Electrical Engineering and Informatics | ||
| 72 | ||
| 10.3311/MINISY2025-014 | ||
| 77 | ||
| Large Language Models | ||
| Natural Language Processing | ||
| Bayesian Networks | ||
| Causal Discovery | ||
| Probabilistic Graphical Models | ||
| Konferenciacikk | ||
| Budapest University of Technology and Economics |
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