Litcius/Paper detail

Privacy and Trust Redefined in Federated Machine Learning

Pavlos Papadopoulos, Will Abramson, Adam J. Hall, Nikolaos Pitropakis, William J. Buchanan

2021Machine Learning and Knowledge Extraction42 citationsDOIOpen Access PDF

Abstract

A common privacy issue in traditional machine learning is that data needs to be disclosed for the training procedures. In situations with highly sensitive data such as healthcare records, accessing this information is challenging and often prohibited. Luckily, privacy-preserving technologies have been developed to overcome this hurdle by distributing the computation of the training and ensuring the data privacy to their owners. The distribution of the computation to multiple participating entities introduces new privacy complications and risks. In this paper, we present a privacy-preserving decentralised workflow that facilitates trusted federated learning among participants. Our proof-of-concept defines a trust framework instantiated using decentralised identity technologies being developed under Hyperledger projects Aries/Indy/Ursa. Only entities in possession of Verifiable Credentials issued from the appropriate authorities are able to establish secure, authenticated communication channels authorised to participate in a federated learning workflow related to mental health data.

Topics & Concepts

Computer scienceWorkflowFederated learningVerifiable secret sharingComputer securityIdentity (music)Information privacyInternet privacyPossession (linguistics)ConfidentialityTrusted ComputingMasking (illustration)Authentication (law)Artificial intelligenceWorld Wide WebAsynchronous communicationData Protection Act 1998Health careData sciencePrivacy policyData integrityGeneral Data Protection RegulationProfiling (computer programming)Information sensitivityPrivacy-Preserving Technologies in DataCryptography and Data SecurityAdversarial Robustness in Machine Learning