A Reputation Game Simulation: Emergent Social Phenomena from Information Theory

IF 2.2 4区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY Annalen der Physik Pub Date : 2021-06-09 DOI:10.1002/andp.202100277
T. Ensslin, V. Kainz, C. Bœhm
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引用次数: 5

Abstract

Reputation is a central element of social communications, be it with human or artificial intelligence (AI), and as such can be the primary target of malicious communication strategies. There is already a vast amount of literature on trust networks and their dynamics using Bayesian principles and involving Theory of Mind models. An issue for these simulations can be the amount of information that can be stored and managed using discretizing variables and hard thresholds. Here a novel approach to the way information is updated that accounts for knowledge uncertainty and is closer to reality is proposed. Agents use information compression techniques to capture their complex environment and store it in their finite memories. The loss of information that results from this leads to emergent phenomena, such as echo chambers, self‐deception, deception symbiosis, and freezing of group opinions. Various malicious strategies of agents are studied for their impact on group sociology, like sycophancy, egocentricity, pathological lying, and aggressiveness. Our set‐up already provides insights into social interactions and can be used to investigate the effects of various communication strategies and find ways to counteract malicious ones. Eventually this work should help to safeguard the design of non‐abusive AI systems.
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声誉博弈模拟:信息论中的新兴社会现象
无论是人类还是人工智能(AI),声誉都是社交沟通的核心要素,因此可能成为恶意沟通策略的主要目标。已经有大量关于信任网络及其动态的文献使用贝叶斯原理并涉及心智理论模型。这些模拟的一个问题可能是可以使用离散变量和硬阈值存储和管理的信息量。本文提出了一种新的信息更新方法,该方法考虑了知识的不确定性,并且更接近现实。智能体使用信息压缩技术捕捉复杂的环境,并将其存储在有限的记忆中。由此导致的信息丢失导致了诸如回音室、自我欺骗、欺骗共生和群体意见冻结等突发现象。研究了代理人的各种恶意策略对群体社会学的影响,如阿谀奉承、自我中心、病态撒谎和攻击性。我们的设置已经提供了对社会互动的见解,可以用来调查各种沟通策略的影响,并找到对抗恶意策略的方法。最终,这项工作应该有助于保护非滥用AI系统的设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Annalen der Physik
Annalen der Physik 物理-物理:综合
CiteScore
4.50
自引率
8.30%
发文量
202
审稿时长
3 months
期刊介绍: Annalen der Physik (AdP) is one of the world''s most renowned physics journals with an over 225 years'' tradition of excellence. Based on the fame of seminal papers by Einstein, Planck and many others, the journal is now tuned towards today''s most exciting findings including the annual Nobel Lectures. AdP comprises all areas of physics, with particular emphasis on important, significant and highly relevant results. Topics range from fundamental research to forefront applications including dynamic and interdisciplinary fields. The journal covers theory, simulation and experiment, e.g., but not exclusively, in condensed matter, quantum physics, photonics, materials physics, high energy, gravitation and astrophysics. It welcomes Rapid Research Letters, Original Papers, Review and Feature Articles.
期刊最新文献
(Ann. Phys. 3/2025) Issue Information: Ann. Phys. 3/2025 (Ann. Phys. 2/2025) (Ann. Phys. 2/2025) Issue Information: Ann. Phys. 2/2025
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