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Trusted AI in Multiagent Systems: An Overview of Privacy and Security for Distributed Learning | IEEE Journals & Magazine | IEEE Xplore

Trusted AI in Multiagent Systems: An Overview of Privacy and Security for Distributed Learning


Abstract:

Motivated by the advancing computational capacity of distributed end-user equipment (UE), as well as the increasing concerns about sharing private data, there has been co...Show More

Abstract:

Motivated by the advancing computational capacity of distributed end-user equipment (UE), as well as the increasing concerns about sharing private data, there has been considerable recent interest in machine learning (ML) and artificial intelligence (AI) that can be processed on distributed UEs. Specifically, in this paradigm, parts of an ML process are outsourced to multiple distributed UEs. Then, the processed information is aggregated on a certain level at a central server, which turns a centralized ML process into a distributed one and brings about significant benefits. However, this new distributed ML paradigm raises new risks in terms of privacy and security issues. In this article, we provide a survey of the emerging security and privacy risks of distributed ML from a unique perspective of information exchange levels, which are defined according to the key steps of an ML process, i.e., we consider the following levels: 1) the level of preprocessed data; 2) the level of learning models; 3) the level of extracted knowledge; and 4) the level of intermediate results. We explore and analyze the potential of threats for each information exchange level based on an overview of current state-of-the-art attack mechanisms and then discuss the possible defense methods against such threats. Finally, we complete the survey by providing an outlook on the challenges and possible directions for future research in this critical area.
Published in: Proceedings of the IEEE ( Volume: 111, Issue: 9, September 2023)
Page(s): 1097 - 1132
Date of Publication: 14 September 2023

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I. Introduction

An explosive growth in data availability arising from proliferating Internet of Things (IoT) and 5G/6G technologies, combined with the availability of increasing computational resources through cloud and data servers, promotes the applications of ML in many domains (e.g., finance, health care, industry, and smart city). ML technologies, e.g., DL, have revolutionized the ways that information is extracted with ground-breaking successes in various areas [1]. Meanwhile, owing to the advent of IoT, the number of intelligent applications with edge computing, such as smart manufacturing, intelligent transportation, and intelligent logistics, is growing dramatically.

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