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Main Authors: Zhu, Chen, Cheng, Yihang, Zhang, Jingshuai, Qiu, Yusheng, Xia, Sitao, Zhu, Hengshu
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2408.11826
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author Zhu, Chen
Cheng, Yihang
Zhang, Jingshuai
Qiu, Yusheng
Xia, Sitao
Zhu, Hengshu
author_facet Zhu, Chen
Cheng, Yihang
Zhang, Jingshuai
Qiu, Yusheng
Xia, Sitao
Zhu, Hengshu
contents In this paper, we present the technical details and periodic findings of our project, CareerAgent, which aims to build a generative simulation framework for a Holacracy organization using Large Language Model-based Autonomous Agents. Specifically, the simulation framework includes three phases: construction, execution, and evaluation, and it incorporates basic characteristics of individuals, organizations, tasks, and meetings. Through our simulation, we obtained several interesting findings. At the organizational level, an increase in the average values of management competence and functional competence can reduce overall members' stress levels, but it negatively impacts deeper organizational performance measures such as average task completion. At the individual level, both competences can improve members' work performance. From the analysis of social networks, we found that highly competent members selectively participate in certain tasks and take on more responsibilities. Over time, small sub-communities form around these highly competent members within the holacracy. These findings contribute theoretically to the study of organizational science and provide practical insights for managers to understand the organization dynamics.
format Preprint
id arxiv_https___arxiv_org_abs_2408_11826
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Generative Organizational Behavior Simulation using Large Language Model based Autonomous Agents: A Holacracy Perspective
Zhu, Chen
Cheng, Yihang
Zhang, Jingshuai
Qiu, Yusheng
Xia, Sitao
Zhu, Hengshu
Computers and Society
Artificial Intelligence
In this paper, we present the technical details and periodic findings of our project, CareerAgent, which aims to build a generative simulation framework for a Holacracy organization using Large Language Model-based Autonomous Agents. Specifically, the simulation framework includes three phases: construction, execution, and evaluation, and it incorporates basic characteristics of individuals, organizations, tasks, and meetings. Through our simulation, we obtained several interesting findings. At the organizational level, an increase in the average values of management competence and functional competence can reduce overall members' stress levels, but it negatively impacts deeper organizational performance measures such as average task completion. At the individual level, both competences can improve members' work performance. From the analysis of social networks, we found that highly competent members selectively participate in certain tasks and take on more responsibilities. Over time, small sub-communities form around these highly competent members within the holacracy. These findings contribute theoretically to the study of organizational science and provide practical insights for managers to understand the organization dynamics.
title Generative Organizational Behavior Simulation using Large Language Model based Autonomous Agents: A Holacracy Perspective
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2408.11826