A Survey of Trustworthy Federated Learning: Issues, Solutions, and Challenges

Author:

Zhang Yifei1ORCID,Zeng Dun2ORCID,Luo Jinglong3ORCID,Fu Xinyu1ORCID,Chen Guanzhong4ORCID,Xu Zenglin3ORCID,King Irwin1ORCID

Affiliation:

1. The Chinese University of Hong Kong, Hong Kong SAR

2. University of Electronic Science and Technology of China and Peng Cheng Lab, China

3. Harbin Institute of Technology, Shenzhen and Peng Cheng Lab, China

4. Harbin Institute of Technology, Shenzhen, China

Abstract

Trustworthy Artificial Intelligence (TAI) has proven invaluable in curbing potential negative repercussions tied to AI applications. Within the TAI spectrum, Federated Learning (FL) emerges as a promising solution to safeguard personal information in distributed settings across a multitude of practical contexts. However, the realm of FL is not without its challenges. Especially worrisome are adversarial attacks targeting its algorithmic robustness and systemic confidentiality. Moreover, the presence of biases and opacity in prediction outcomes further complicates FL’s broader adoption. Consequently, there is a growing expectation for FL to instill trust. To address this, we chart out a comprehensive road-map for Trustworthy Federated Learning (TFL) and provide an overview of existing efforts across four pivotal dimensions: Privacy & Security , Robustness , Fairness , and Explainability . For each dimension, we identify potential pitfalls that might undermine TFL and present a curated selection of defensive strategies, enriched by a discourse on technical solutions tailored for TFL. Furthermore, we present potential challenges and future directions to be explored for in-depth TFL research with broader impacts.

Publisher

Association for Computing Machinery (ACM)

Reference294 articles.

1. Martín Abadi Andy Chu Ian J. Goodfellow H. Brendan McMahan Ilya Mironov Kunal Talwar and Li Zhang. 2016. Deep Learning with Differential Privacy. In CCS. ACM 308–318.

2. Guillaume Alain, Alex Lamb, Chinnadhurai Sankar, Aaron C. Courville, and Yoshua Bengio. 2015. Variance Reduction in SGD by Distributed Importance Sampling. CoRR abs/1511.06481 (2015).

3. Fine-Grained Data Selection for Improved Energy Efficiency of Federated Edge Learning

4. Dan Alistarh, Zeyuan Allen-Zhu, and Jerry Li. 2018. Byzantine stochastic gradient descent. Advances in neural information processing systems 31 (2018).

5. Suzan Almutairi and Ahmed Barnawi. 2023. Federated Learning Vulnerabilities, Threats and Defenses: A Systematic Review and Future Directions. Internet of Things (2023), 100947.

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