IEEE Guide for Framework for Trustworthy Federated Machine Learning: IEEE Std 3187™-2024

Artificial Intelligence Standards Committee

Research output: Book/ReportCommissioned reportpeer-review

Abstract

The development and application of federated machine learning are facing the critical challenges of balancing the tradeoff among privacy, security, performance, and efficiency, how to realize supervision covering the whole life cycle, and how to get explainable results. Thus, trustworthy federated machine learning is proposed to solve the above problem. In this standard, a general view of framework for trustworthy federated machine learning is provided in four parts: a principle in trustworthy federated machine learning, requirements from the perspective of different principles and different federated machine learning participants, and methods to realize trustworthy federated machine learning. Also provided is guidance on how trustworthy federated machine learning is used in various scenarios.
Original languageEnglish
Place of PublicationNew York
PublisherIEEE
Number of pages48
ISBN (Electronic)9798855714715
ISBN (Print)9798855714722
DOIs
Publication statusPublished - 19 Dec 2024

Keywords

  • federated machine learning
  • framework
  • IEEE 3187™
  • machine learning
  • principle
  • trustworthy federated machine learning

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