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Causal Reasoning in Language Models
This chapter examines the capabilities of large language models, particularly GPT-3.5 and GPT-4, in causal reasoning and the methodologies used for causal discovery. It highlights the strengths and limitations of these models when answering natural language causal queries, along with the implications of their performance in decision-making contexts. The discussion emphasizes the need for clear causal identification and the role of prompt variation in evaluating model performance on causal inference tasks.