Revealing Positive and Negative Role Models to Help People Make Good Decisions
Avrim Blum, Keziah Naggita, Matthew R. Walter, Jingyan Wang

TL;DR
This paper studies how a social planner can strategically reveal positive and negative role models in a social network to maximize overall social welfare, addressing computational challenges and fairness considerations.
Contribution
It introduces algorithms and theoretical guarantees for welfare maximization when revealing role models, including handling non-submodular cases and group fairness.
Findings
Constant-factor approximation for welfare when agents have limited negative neighbors
Sample complexity guarantees for observing a subset of agents
Fairness guarantees across different groups
Abstract
We consider a setting where agents take action by following their role models in a social network, and study strategies for a social planner to help agents by revealing whether the role models are positive or negative. Specifically, agents observe a local neighborhood of possible role models they can emulate, but do not know their true labels. Revealing a positive label encourages emulation, while revealing a negative one redirects agents toward alternative options. The social planner observes all labels, but operates under a limited disclosure budget that it selectively allocates to maximize social welfare (the expected number of agents who emulate adjacent positive role models). We consider both algorithms and hardness results for welfare maximization, and provide a sample-complexity guarantee when the planner observes a sampled subset of agents. We also consider fairness guarantees…
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Taxonomy
TopicsEthics and Social Impacts of AI · Game Theory and Voting Systems · Mobile Crowdsensing and Crowdsourcing
