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Main Authors: Chen, Kongyang, Lin, Yi, Luo, Hui, Mi, Bing, Xiao, Yatie, Ma, Chao, Silva, Jorge Sá
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.16851
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author Chen, Kongyang
Lin, Yi
Luo, Hui
Mi, Bing
Xiao, Yatie
Ma, Chao
Silva, Jorge Sá
author_facet Chen, Kongyang
Lin, Yi
Luo, Hui
Mi, Bing
Xiao, Yatie
Ma, Chao
Silva, Jorge Sá
contents In contemporary edge computing systems, decentralized edge nodes aggregate unprocessed data and facilitate data analytics to uphold low transmission latency and real-time data processing capabilities. Recently, these edge nodes have evolved to facilitate the implementation of distributed machine learning models, utilizing their computational resources to enable intelligent decision-making, thereby giving rise to an emerging domain referred to as edge intelligence. However, within the realm of edge intelligence, susceptibility to numerous security and privacy threats against machine learning models becomes evident. This paper addresses the issue of membership inference leakage in distributed edge intelligence systems. Specifically, our focus is on an autonomous scenario wherein edge nodes collaboratively generate a global model. The utilization of membership inference attacks serves to elucidate the potential data leakage in this particular context. Furthermore, we delve into the examination of several defense mechanisms aimed at mitigating the aforementioned data leakage problem. Experimental results affirm that our approach is effective in detecting data leakage within edge intelligence systems, and the implementation of our defense methods proves instrumental in alleviating this security threat. Consequently, our findings contribute to safeguarding data privacy in the context of edge intelligence systems.
format Preprint
id arxiv_https___arxiv_org_abs_2404_16851
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle EdgeLeakage: Membership Information Leakage in Distributed Edge Intelligence Systems
Chen, Kongyang
Lin, Yi
Luo, Hui
Mi, Bing
Xiao, Yatie
Ma, Chao
Silva, Jorge Sá
Cryptography and Security
In contemporary edge computing systems, decentralized edge nodes aggregate unprocessed data and facilitate data analytics to uphold low transmission latency and real-time data processing capabilities. Recently, these edge nodes have evolved to facilitate the implementation of distributed machine learning models, utilizing their computational resources to enable intelligent decision-making, thereby giving rise to an emerging domain referred to as edge intelligence. However, within the realm of edge intelligence, susceptibility to numerous security and privacy threats against machine learning models becomes evident. This paper addresses the issue of membership inference leakage in distributed edge intelligence systems. Specifically, our focus is on an autonomous scenario wherein edge nodes collaboratively generate a global model. The utilization of membership inference attacks serves to elucidate the potential data leakage in this particular context. Furthermore, we delve into the examination of several defense mechanisms aimed at mitigating the aforementioned data leakage problem. Experimental results affirm that our approach is effective in detecting data leakage within edge intelligence systems, and the implementation of our defense methods proves instrumental in alleviating this security threat. Consequently, our findings contribute to safeguarding data privacy in the context of edge intelligence systems.
title EdgeLeakage: Membership Information Leakage in Distributed Edge Intelligence Systems
topic Cryptography and Security
url https://arxiv.org/abs/2404.16851