Social Norm Design for Information Exchange Systems with Limited Observations
Jie Xu, Mihaela van der Schaar

TL;DR
This paper explores how to design social norms for information exchange systems with limited observations, accounting for belief heterogeneity, and finds that mildest punishments optimize system stability.
Contribution
It introduces a belief-based model for social norm design under limited observations and demonstrates that mild punishments are optimal for system stability.
Findings
Mildest punishments are optimal under belief heterogeneity.
Belief heterogeneity affects users' adherence to social norms.
System stability is achieved with appropriate reputation update rules.
Abstract
Information exchange systems differ in many ways, but all share a common vulnerability to selfish behavior and free-riding. In this paper, we build incentives schemes based on social norms. Social norms prescribe a social strategy for the users in the system to follow and deploy reputation schemes to reward or penalize users depending on their behaviors. Because users in these systems often have only limited capability to observe the global system information, e.g. the reputation distribution of the users participating in the system, their beliefs about the reputation distribution are heterogeneous and biased. Such belief heterogeneity causes a positive fraction of users to not follow the social strategy. In such practical scenarios, the standard equilibrium analysis deployed in the economics literature is no longer directly applicable and hence, the system design needs to consider…
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Taxonomy
TopicsAuction Theory and Applications · Game Theory and Applications · Access Control and Trust
