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The Magic of IF: Investigating Causal Reasoning Abilities in Large Language Models of Code

Code-trained large language models exhibit superior causal reasoning abilities compared to text-only models, attributed to the programming structures in code prompts.

Year
2023
Venue
arXiv 2023
Authors
5
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arxiv.org/abs/2305.19213ARXIV-DEFAULT
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Abstract

Causal reasoning, the ability to identify cause-and-effect relationship, is crucial in human thinking. Although large language models (LLMs) succeed in many NLP tasks, it is still challenging for them to conduct complex causal reasoning like abductive reasoning and counterfactual reasoning. Given the fact that programming code may express causal relations more often and explicitly with conditional statements like if, we want to explore whether Code-LLMs acquire better causal reasoning abilities. Our experiments show that compared to text-only LLMs, Code-LLMs with code prompts are significantly better in causal reasoning. We further intervene on the prompts from different aspects, and discover that the programming structure is crucial in code prompt design, while Code-LLMs are robust towards format perturbations.

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5