YOU SHALL NOT COMPUTE on my Data: Access Policies for Privacy-Preserving Data Marketplaces and an Implementation for a Distributed Market using MPC
Stefan More, Lukas Alber

TL;DR
This paper introduces a flexible access control architecture for privacy-preserving data marketplaces, allowing data sellers to specify detailed restrictions on buyers and computations, implemented practically using MPC with minimal overhead.
Contribution
It proposes a novel access control framework for private data markets, enabling detailed seller-defined policies on buyer access and computation types, integrated into an MPC-based marketplace.
Findings
The architecture effectively enforces seller policies in data access and computation.
Implementation on the KRAKEN marketplace demonstrates practicality with negligible overhead.
The system maintains security against various adversaries.
Abstract
Personal data is an attractive source of insights for a diverse field of research and business. While our data is highly valuable, it is often privacy-sensitive. Thus, regulations like the GDPR restrict what data can be legally published, and what a buyer may do with this sensitive data. While personal data must be protected, we can still sell some insights gathered from our data that do not hurt our privacy. A data marketplace is a platform that helps users to sell their data while assisting buyers in discovering relevant datasets. The major challenge such a marketplace faces is balancing between offering valuable insights into data while preserving privacy requirements. Private data marketplaces try to solve this challenge by offering privacy-preserving computations on personal data. Such computations allow for calculating statistics or training machine learning models on personal…
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