CLOMO: Counterfactual Logical Modification With Large Language Models · The Large Language Model Bible Contribute to LLM-Bible

CLOMO: Counterfactual Logical Modification With Large Language Models

Huang Yinya, Hong Ruixin, Zhang Hongming, Shao Wei, Yang Zhicheng, Yu Dong, Zhang Changshui, Liang Xiaodan, Song Linqi. Proceedings of the 2023

[Paper] [Code]    
Has Code

In this study, we delve into the realm of counterfactual reasoning capabilities of large language models (LLMs). Our primary objective is to cultivate the counterfactual thought processes within LLMs and rigorously assess these processes for their validity. Specifically, we introduce a novel task, Counterfactual Logical Modification (CLOMO), and a high-quality human-annotated benchmark. In this task, LLMs must adeptly alter a given argumentative text to uphold a predetermined logical relationship. To effectively evaluate a generation model’s counterfactual capabilities, we propose an innovative evaluation metric, the decomposed Self-Evaluation Score (SES) to directly evaluate the natural language output of LLMs instead of modeling the task as a multiple-choice problem. Analysis shows that the proposed automatic metric aligns well with human preference. Our experimental results show that while LLMs demonstrate a notable capacity for logical counterfactual thinking, there remains a discernible gap between their current abilities and human performance. Code and data are available at https://github.com/Eleanor-H/CLOMO.

Similar Work