AIMay 19, 2023

Trustworthy Federated Learning: A Survey

arXiv:2305.11537v120 citations
Originality Synthesis-oriented
AI Analysis

It addresses trustworthiness issues in FL for researchers and practitioners, but it is incremental as it synthesizes existing literature without introducing novel methods.

This survey tackles the problem of ensuring trustworthiness in Federated Learning (FL) by providing an extensive overview of existing solutions and proposing a taxonomy based on interpretability, fairness, and security & privacy pillars, without presenting new experimental results or concrete numbers.

Federated Learning (FL) has emerged as a significant advancement in the field of Artificial Intelligence (AI), enabling collaborative model training across distributed devices while maintaining data privacy. As the importance of FL increases, addressing trustworthiness issues in its various aspects becomes crucial. In this survey, we provide an extensive overview of the current state of Trustworthy FL, exploring existing solutions and well-defined pillars relevant to Trustworthy . Despite the growth in literature on trustworthy centralized Machine Learning (ML)/Deep Learning (DL), further efforts are necessary to identify trustworthiness pillars and evaluation metrics specific to FL models, as well as to develop solutions for computing trustworthiness levels. We propose a taxonomy that encompasses three main pillars: Interpretability, Fairness, and Security & Privacy. Each pillar represents a dimension of trust, further broken down into different notions. Our survey covers trustworthiness challenges at every level in FL settings. We present a comprehensive architecture of Trustworthy FL, addressing the fundamental principles underlying the concept, and offer an in-depth analysis of trust assessment mechanisms. In conclusion, we identify key research challenges related to every aspect of Trustworthy FL and suggest future research directions. This comprehensive survey serves as a valuable resource for researchers and practitioners working on the development and implementation of Trustworthy FL systems, contributing to a more secure and reliable AI landscape.

Foundations

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