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Main Authors: Wang, Zhenyu, Wang, Dequan, Xu, Yi, Zhou, Lingfeng, Zhou, Yiqi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.16301
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author Wang, Zhenyu
Wang, Dequan
Xu, Yi
Zhou, Lingfeng
Zhou, Yiqi
author_facet Wang, Zhenyu
Wang, Dequan
Xu, Yi
Zhou, Lingfeng
Zhou, Yiqi
contents The recent wave of artificial intelligence, epitomized by large language models (LLMs),has presented opportunities and challenges for methodological innovation in political science,sparking discussions on a potential paradigm shift in the social sciences. However, how can weunderstand the impact of LLMs on knowledge production and paradigm transformation in thesocial sciences from a comprehensive perspective that integrates technology and methodology? What are LLMs' specific applications and representative innovative methods in political scienceresearch? These questions, particularly from a practical methodological standpoint, remainunderexplored. This paper proposes the "Intelligent Computing Social Modeling" (ICSM) methodto address these issues by clarifying the critical mechanisms of LLMs. ICSM leverages thestrengths of LLMs in idea synthesis and action simulation, advancing intellectual exploration inpolitical science through "simulated social construction" and "simulation validation." Bysimulating the U.S. presidential election, this study empirically demonstrates the operationalpathways and methodological advantages of ICSM. By integrating traditional social scienceparadigms, ICSM not only enhances the quantitative paradigm's capability to apply big data toassess the impact of factors but also provides qualitative paradigms with evidence for socialmechanism discovery at the individual level, offering a powerful tool that balances interpretabilityand predictability in social science research. The findings suggest that LLMs will drivemethodological innovation in political science through integration and improvement rather thandirect substitution.
format Preprint
id arxiv_https___arxiv_org_abs_2410_16301
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Intelligent Computing Social Modeling and Methodological Innovations in Political Science in the Era of Large Language Models
Wang, Zhenyu
Wang, Dequan
Xu, Yi
Zhou, Lingfeng
Zhou, Yiqi
Computers and Society
Artificial Intelligence
The recent wave of artificial intelligence, epitomized by large language models (LLMs),has presented opportunities and challenges for methodological innovation in political science,sparking discussions on a potential paradigm shift in the social sciences. However, how can weunderstand the impact of LLMs on knowledge production and paradigm transformation in thesocial sciences from a comprehensive perspective that integrates technology and methodology? What are LLMs' specific applications and representative innovative methods in political scienceresearch? These questions, particularly from a practical methodological standpoint, remainunderexplored. This paper proposes the "Intelligent Computing Social Modeling" (ICSM) methodto address these issues by clarifying the critical mechanisms of LLMs. ICSM leverages thestrengths of LLMs in idea synthesis and action simulation, advancing intellectual exploration inpolitical science through "simulated social construction" and "simulation validation." Bysimulating the U.S. presidential election, this study empirically demonstrates the operationalpathways and methodological advantages of ICSM. By integrating traditional social scienceparadigms, ICSM not only enhances the quantitative paradigm's capability to apply big data toassess the impact of factors but also provides qualitative paradigms with evidence for socialmechanism discovery at the individual level, offering a powerful tool that balances interpretabilityand predictability in social science research. The findings suggest that LLMs will drivemethodological innovation in political science through integration and improvement rather thandirect substitution.
title Intelligent Computing Social Modeling and Methodological Innovations in Political Science in the Era of Large Language Models
topic Computers and Society
Artificial Intelligence
url https://arxiv.org/abs/2410.16301