A review of homomorphic encryption and software tools for encrypted statistical machine learning
OA Location
Author(s)
Aslett, LJM
Esperança, PM
Holmes, CC
Type
Working Paper
Abstract
Recent advances in cryptography promise to enable secure statistical computation on encrypted data, whereby a limited set of operations can be carried out without the need to first decrypt. We review these homomorphic encryption schemes in a manner accessible to statisticians and machine learners, focusing on pertinent limitations inherent in the current state of the art. These limitations restrict the kind of statistics and machine learning algorithms which can be implemented and we review those which have been successfully applied in the literature. Finally, we document a high performance R package implementing a recent homomorphic scheme in a general framework.
Date Issued
2015
Citation
2015
Copyright Statement
© 2015 The Authors
Identifier
https://arxiv.org/abs/1508.06574