$\text{C}^2\text{P}$: Featuring Large Language Models with Causal Reasoning
Abstract
Causal reasoning is one of the primary bottlenecks that Large Language Models (LLMs) must overcome to attain human-level intelligence. Recent studies indicate that LLMs display near-random performance on reasoning tasks. To address this, we introduce the Causal Chain of Prompting (), a reasoning framework that aims to equip current LLMs with causal reasoning capabilities as the first framework of its kind operating autonomously without relying on external tools or modules during both the causal learning and reasoning phases. To evaluate the performance of , we first demonstrate that reasoning accuracy improved by over and for GPT-4 Turbo and LLaMA 3.1, respectively, when using our framework, compared to the same models without on a synthetic benchmark dataset. Then, using few-shot learning of the same LLMs with , the reasoning accuracy increased by more than and , respectively, with as few as ten examples, compared to the corresponding LLMs without on the same dataset. To evaluate in realistic scenarios, we utilized another benchmark dataset containing natural stories across various fields, including healthcare, medicine, economics, education, social sciences, environmental science, and marketing. The results show improved reasoning when is applied, compared to cases where our framework is not used, which often leads to random and hallucinated responses. By showing the improved performance of few-shot learned GPT-4 Turbo and LLaMA 3.1 with , we demonstrate the generalizability of our framework.
Cite
@article{arxiv.2407.18069,
title = {$\text{C}^2\text{P}$: Featuring Large Language Models with Causal Reasoning},
author = {Abdolmahdi Bagheri and Matin Alinejad and Mahdi Dehshiri and Kevin Bello and Alireza Akhondi-Asl},
journal= {arXiv preprint arXiv:2407.18069},
year = {2025}
}
Comments
arXiv admin note: text overlap with arXiv:2306.05836 by other authors