SOTAVerified

Stratified cross-validation for unbiased and privacy-preserving federated learning

2020-01-22Unverified0· sign in to hype

R. Bey, R. Goussault, M. Benchoufi, R. Porcher

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Large-scale collections of electronic records constitute both an opportunity for the development of more accurate prediction models and a threat for privacy. To limit privacy exposure new privacy-enhancing techniques are emerging such as federated learning which enables large-scale data analysis while avoiding the centralization of records in a unique database that would represent a critical point of failure. Although promising regarding privacy protection, federated learning prevents using some data-cleaning algorithms thus inducing new biases. In this work we focus on the recurrent problem of duplicated records that, if not handled properly, may cause over-optimistic estimations of a model's performances. We introduce and discuss stratified cross-validation, a validation methodology that leverages stratification techniques to prevent data leakage in federated learning settings without relying on demanding deduplication algorithms.

Tasks

Reproductions