Privacy-Preserving Dataset Combination
Journal:
arXiv
Published Date:
Feb 9, 2025
Abstract
Access to diverse, high-quality datasets is crucial for machine learning
model performance, yet data sharing remains limited by privacy concerns and
competitive interests, particularly in regulated domains like healthcare. This
dynamic especially disadvantages smaller organizations that lack resources to
purchase data or negotiate favorable sharing agreements. We present SecureKL, a
privacy-preserving framework that enables organizations to identify beneficial
data partnerships without exposing sensitive information. Building on recent
advances in dataset combination methods, we develop a secure multiparty
computation protocol that maintains strong privacy guarantees while achieving
>90\% correlation with plaintext evaluations. In experiments with real-world
hospital data, SecureKL successfully identifies beneficial data partnerships
that improve model performance for intensive care unit mortality prediction
while preserving data privacy. Our framework provides a practical solution for
organizations seeking to leverage collective data resources while maintaining
privacy and competitive advantages. These results demonstrate the potential for
privacy-preserving data collaboration to advance machine learning applications
in high-stakes domains while promoting more equitable access to data resources.