Collective Privacy Recovery: Data-sharing Coordination via Decentralized Artificial Intelligence
January 15, 2023 Β· Declared Dead Β· π PNAS Nexus
"No code URL or promise found in abstract"
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Authors
Evangelos Pournaras, Mark Christopher Ballandies, Stefano Bennati, Chien-fei Chen
arXiv ID
2301.05995
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.CY,
cs.DC,
cs.IR,
cs.MA
Citations
10
Venue
PNAS Nexus
Last Checked
4 months ago
Abstract
Collective privacy loss becomes a colossal problem, an emergency for personal freedoms and democracy. But, are we prepared to handle personal data as scarce resource and collectively share data under the doctrine: as little as possible, as much as necessary? We hypothesize a significant privacy recovery if a population of individuals, the data collective, coordinates to share minimum data for running online services with the required quality. Here we show how to automate and scale-up complex collective arrangements for privacy recovery using decentralized artificial intelligence. For this, we compare for first time attitudinal, intrinsic, rewarded and coordinated data sharing in a rigorous living-lab experiment of high realism involving >27,000 real data disclosures. Using causal inference and cluster analysis, we differentiate criteria predicting privacy and five key data-sharing behaviors. Strikingly, data-sharing coordination proves to be a win-win for all: remarkable privacy recovery for people with evident costs reduction for service providers.
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