The Social Cognition Ability Evaluation of LLMs: A Dynamic Gamified Assessment and Hierarchical Social Learning Measurement Approach

Author:

Ni Qin1ORCID,Yu Yangze2ORCID,Ma Yiming3ORCID,Lin Xin3ORCID,Deng Ciping4ORCID,Wei Tingjiang3ORCID,Xuan Mo5ORCID

Affiliation:

1. Key Laboratory of Multilingual Education with AI, Shanghai International Studies University, China

2. The College of Information, Mechanical and Electrical Engineering, SHNU, China

3. School of Computer Science and Technology, East China Normal University, China

4. Shanghai Key Laboratory of Brain Functional Genomics, Shanghai Changning-ECNU Mental Health Center, School of Psychology and Cognitive Science, East China Normal University, China

5. Songjiang Yunjian High School Affiliated to SFLS, China

Abstract

Large Language Model(LLM) has shown amazing abilities in reasoning tasks, theory of mind(ToM) has been tested in many studies as part of reasoning tasks, and social learning, which is closely related to theory of mind, are still lack of investigation. However, the test methods and materials make the test results unconvincing. We propose a dynamic gamified assessment(DGA) and hierarchical social learning measurement to test ToM and social learning capacities in LLMs. The test for ToM consists of five parts. First, we extract ToM tasks from ToM experiments and then design game rules to satisfy the ToM task requirement. After that, we design ToM questions to match the game’s rules and use these to generate test materials. Finally, we go through the above steps to test the model. To assess the social learning ability, we introduce a novel set of social rules (three in total). Experiment results demonstrate that, except GPT-4, LLMs performed poorly on the ToM test but showed a certain level of social learning ability in social learning measurement.

Publisher

Association for Computing Machinery (ACM)

Reference32 articles.

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3. Albert Bandura and Richard H Walters. 1977. Social learning theory. Vol. 1. Englewood cliffs Prentice Hall.

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5. Cindy Beaudoin, Élizabel Leblanc, Charlotte Gagner, and Miriam H Beauchamp. 2020. Systematic review and inventory of theory of mind measures for young children. Frontiers in psychology 10 (2020), 2905.

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