Impact of Social Learning on Privacy-Preserving Data Collection
Abdullah Basar Akbay, Weina Wang, Junshan Zhang

TL;DR
This paper investigates how social learning influences privacy-preserving data collection, showing that social interactions can improve data accuracy and reduce privacy costs through strategic reporting strategies.
Contribution
It introduces a Bayesian game framework analyzing social learning effects on user strategies and proposes mechanisms that leverage social signals for better privacy and data accuracy.
Findings
Social learning enables users to adopt non-disclosive strategies with zero privacy cost.
Both data accuracy and privacy costs are improved through social learning mechanisms.
Bounds on minimum payments for desired estimation accuracy are derived.
Abstract
We study a model where a data collector obtains data from users through a payment mechanism, aiming to learn the underlying state from the elicited data. The private signal of each user represents her knowledge about the state; and through social interactions each user can also learn noisy versions of her social friends' signals, which is called `learned group signals'. Thanks to social learning, users have richer information about the state beyond their private signals. Based on both her private signal and learned group signals, each user makes strategic decisions to report a privacy-preserved version of her data to the data collector. We develop a Bayesian game theoretic framework to study the impact of social learning on users' data reporting strategies and devise the payment mechanism for the data collector accordingly. Our findings reveal that, in general, the desired data…
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Taxonomy
TopicsMobile Crowdsensing and Crowdsourcing · Privacy-Preserving Technologies in Data · Opinion Dynamics and Social Influence
