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Main Authors: Liu, Xuan, Zhang, Jie, Shang, Haoyang, Guo, Song, Yang, Chengxu, Zhu, Quanyan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.14744
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author Liu, Xuan
Zhang, Jie
Shang, Haoyang
Guo, Song
Yang, Chengxu
Zhu, Quanyan
author_facet Liu, Xuan
Zhang, Jie
Shang, Haoyang
Guo, Song
Yang, Chengxu
Zhu, Quanyan
contents Large language models (LLMs) have been shown to face hallucination issues due to the data they trained on often containing human bias; whether this is reflected in the decision-making process of LLM Agents remains under-explored. As LLM Agents are increasingly employed in intricate social environments, a pressing and natural question emerges: Can we utilize LLM Agents' systematic hallucinations to mirror human cognitive biases, thus exhibiting irrational social intelligence? In this paper, we probe the irrational behavior among contemporary LLM Agents by melding practical social science experiments with theoretical insights. Specifically, We propose CogMir, an open-ended Multi-LLM Agents framework that utilizes hallucination properties to assess and enhance LLM Agents' social intelligence through cognitive biases. Experimental results on CogMir subsets show that LLM Agents and humans exhibit high consistency in irrational and prosocial decision-making under uncertain conditions, underscoring the prosociality of LLM Agents as social entities and highlighting the significance of hallucination properties. Additionally, the CogMir framework demonstrates its potential as a valuable platform for encouraging more research into the social intelligence of LLM Agents.
format Preprint
id arxiv_https___arxiv_org_abs_2405_14744
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Exploring Prosocial Irrationality for LLM Agents: A Social Cognition View
Liu, Xuan
Zhang, Jie
Shang, Haoyang
Guo, Song
Yang, Chengxu
Zhu, Quanyan
Computers and Society
Large language models (LLMs) have been shown to face hallucination issues due to the data they trained on often containing human bias; whether this is reflected in the decision-making process of LLM Agents remains under-explored. As LLM Agents are increasingly employed in intricate social environments, a pressing and natural question emerges: Can we utilize LLM Agents' systematic hallucinations to mirror human cognitive biases, thus exhibiting irrational social intelligence? In this paper, we probe the irrational behavior among contemporary LLM Agents by melding practical social science experiments with theoretical insights. Specifically, We propose CogMir, an open-ended Multi-LLM Agents framework that utilizes hallucination properties to assess and enhance LLM Agents' social intelligence through cognitive biases. Experimental results on CogMir subsets show that LLM Agents and humans exhibit high consistency in irrational and prosocial decision-making under uncertain conditions, underscoring the prosociality of LLM Agents as social entities and highlighting the significance of hallucination properties. Additionally, the CogMir framework demonstrates its potential as a valuable platform for encouraging more research into the social intelligence of LLM Agents.
title Exploring Prosocial Irrationality for LLM Agents: A Social Cognition View
topic Computers and Society
url https://arxiv.org/abs/2405.14744