Computational Sociology of Humans and Machines; Conflict and Collaboration
- URL: http://arxiv.org/abs/2412.14606v1
- Date: Thu, 19 Dec 2024 07:55:56 GMT
- Title: Computational Sociology of Humans and Machines; Conflict and Collaboration
- Authors: Taha Yasseri,
- Abstract summary: This Chapter examines the dynamics of conflict and collaboration in human-machine systems.<n>It focuses on large-scale, internet-based collaborative platforms.<n>It identifies recurring patterns of interaction, including serial attacks, reciprocal revenge, and third-party interventions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: This Chapter examines the dynamics of conflict and collaboration in human-machine systems, with a particular focus on large-scale, internet-based collaborative platforms. While these platforms represent successful examples of collective knowledge production, they are also sites of significant conflict, as diverse participants with differing intentions and perspectives interact. The analysis identifies recurring patterns of interaction, including serial attacks, reciprocal revenge, and third-party interventions. These microstructures reveal the role of experience, cultural differences, and topic sensitivity in shaping human-human, human-machine, and machine-machine interactions. The chapter further investigates the role of algorithmic agents and bots, highlighting their dual nature: they enhance collaboration by automating tasks but can also contribute to persistent conflicts with both humans and other machines. We conclude with policy recommendations that emphasize transparency, balance, cultural sensitivity, and governance to maximize the benefits of human-machine synergy while minimizing potential detriments.
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