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通过多智能体社会模拟理解极化动态。

Understanding dynamics of polarization via multiagent social simulation.

作者信息

Haque Amanul, Ajmeri Nirav, Singh Munindar P

机构信息

Department of Computer Science, North Carolina State University, Raleigh, NC USA.

Department of Computer Science, University of Bristol, Bristol, UK.

出版信息

AI Soc. 2023 Jan 21:1-17. doi: 10.1007/s00146-022-01626-5.

Abstract

It is widely recognized that the Web contributes to user polarization, and such polarization affects not just politics but also peoples' stances about public health, such as vaccination. Understanding polarization in social networks is challenging because it depends not only on user attitudes but also their interactions and exposure to information. We adopt Social Judgment Theory to operationalize attitude shift and model user behavior based on empirical evidence from past studies. We design a social simulation to analyze how content sharing affects user satisfaction and polarization in a social network. We investigate the influence of varying tolerance in users and selectively exposing users to congenial views. We find that (1) higher user tolerance slows down polarization and leads to lower user satisfaction; (2) higher selective exposure leads to higher polarization and lower user reach; and (3) both higher tolerance and higher selective exposure lead to a more homophilic social network.

摘要

人们普遍认识到,网络加剧了用户的两极分化,这种两极分化不仅影响政治,还影响人们对公共卫生的立场,比如疫苗接种。理解社交网络中的两极分化具有挑战性,因为它不仅取决于用户的态度,还取决于他们的互动以及对信息的接触。我们采用社会判断理论来实施态度转变,并根据以往研究的实证证据对用户行为进行建模。我们设计了一个社会模拟来分析内容分享如何影响社交网络中的用户满意度和两极分化。我们研究了用户不同容忍度的影响,并选择性地让用户接触志同道合的观点。我们发现:(1)用户容忍度越高,两极分化减缓,但用户满意度降低;(2)选择性接触程度越高,两极分化越严重,用户触及范围越低;(3)容忍度和选择性接触程度越高,都会导致社交网络的同质性更强。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/38de/9859750/6bbe4105e670/146_2022_1626_Fig1_HTML.jpg

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