Litcius/Paper detail

Influence of External Information on Large Language Models Mirrors Social Cognitive Patterns

Ning Bian, Hongyu Lin, P Liu, Yaojie Lu, C.-P. Zhang, Ben He, Xianpei Han, Le Sun

2024IEEE Transactions on Computational Social Systems12 citationsDOI

Abstract

Social cognitive theory explains how people learn and acquire knowledge through observing others. Recent years have witnessed the rapid development of large language models (LLMs), which suggests their potential significance as agents in the society. LLMs, as AI agents, can observe external information, which shapes their cognition and behaviors. However, the extent to which external information influences LLMs’ cognition and behaviors remains unclear. This study investigates how external statements and opinions influence LLMs’ thoughts and behaviors from a social cognitive perspective. Three experiments were conducted to explore the effects of external information on LLMs’ memories, opinions, and social media behavioral decisions. Sociocognitive factors, including source authority, social identity, and social role, were analyzed to investigate their moderating effects. Results showed that external information can significantly shape LLMs’ memories, opinions, and behaviors, with these changes mirroring human social cognitive patterns such as authority bias, in-group bias, emotional positivity, and emotion contagion. This underscores the challenges in developing safe and unbiased LLMs, and emphasizes the importance of understanding the susceptibility of LLMs to external influences.

Topics & Concepts

CognitionComputer scienceCognitive psychologyComputer securityCognitive sciencePsychologyHuman–computer interactionNeuroscienceTopic Modeling