How to Incentivize Data-Driven Collaboration Among Competing Parties
Pablo Azar, Shafi Goldwasser, and Sunoo Park

TL;DR
This paper models incentivization for data sharing among competing parties, proposing mechanisms to ensure mutual benefits and developing efficient algorithms and cryptographic protocols for secure, ordered collaboration.
Contribution
It introduces a formal model for incentivized multi-party data collaboration, analyzes the computational complexity, and provides practical algorithms and cryptographic solutions for secure, ordered outputs.
Findings
Computing collaborative equilibrium is NP-complete in general.
Efficient algorithms exist for natural model settings.
Decentralized implementation is possible with extended secure multiparty computation.
Abstract
The availability of vast amounts of data is changing how we can make medical discoveries, predict global market trends, save energy, and develop educational strategies. In some settings such as Genome Wide Association Studies or deep learning, sheer size of data seems critical. When data is held distributedly by many parties, they must share it to reap its full benefits. One obstacle to this revolution is the lack of willingness of different parties to share data, due to reasons such as loss of privacy or competitive edge. Cryptographic works address privacy aspects, but shed no light on individual parties' losses/gains when access to data carries tangible rewards. Even if it is clear that better overall conclusions can be drawn from collaboration, are individual collaborators better off by collaborating? Addressing this question is the topic of this paper. * We formalize a model of…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Distributed systems and fault tolerance · Blockchain Technology Applications and Security
