Open AccessPosted Content
A Survey on Federated Learning Systems: Vision, Hype and Reality for Data Privacy and Protection
TL;DR: A comprehensive review of federated learning systems can be found in this paper, where the authors provide a thorough categorization of the existing systems according to six different aspects, including data distribution, machine learning model, privacy mechanism, communication architecture, scale of federation and motivation of federation.
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Abstract: Federated learning has been a hot research topic in enabling the collaborative training of machine learning models among different organizations under the privacy restrictions. As researchers try to support more machine learning models with different privacy-preserving approaches, there is a requirement in developing systems and infrastructures to ease the development of various federated learning algorithms. Similar to deep learning systems such as PyTorch and TensorFlow that boost the development of deep learning, federated learning systems (FLSs) are equivalently important, and face challenges from various aspects such as effectiveness, efficiency, and privacy. In this survey, we conduct a comprehensive review on federated learning systems. To achieve smooth flow and guide future research, we introduce the definition of federated learning systems and analyze the system components. Moreover, we provide a thorough categorization for federated learning systems according to six different aspects, including data distribution, machine learning model, privacy mechanism, communication architecture, scale of federation and motivation of federation. The categorization can help the design of federated learning systems as shown in our case studies. By systematically summarizing the existing federated learning systems, we present the design factors, case studies, and future research opportunities.
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Citations
A survey on security and privacy of federated learning
Viraaji Mothukuri,Reza M. Parizi,Seyedamin Pouriyeh,Yan Huang,Ali Dehghantanha,Gautam Srivastava,Gautam Srivastava +6 more
TL;DR: This paper aims to provide a comprehensive study concerning FL’s security and privacy aspects that can help bridge the gap between the current state of federated AI and a future in which mass adoption is possible.
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Model-Contrastive Federated Learning
Qinbin Li,Bingsheng He,Dawn Song +2 more
- 01 Jun 2021
TL;DR: Zhang et al. as discussed by the authors proposed model-contrastive federated learning (MOON) to correct the local training of individual parties, i.e., conducting contrastive learning in model-level.
Federated Learning for Internet of Things: A Comprehensive Survey
TL;DR: In this paper, a comprehensive survey of the emerging applications of federated learning in IoT networks is provided, which explores and analyzes the potential of FL for enabling a wide range of IoT services, including IoT data sharing, data offloading and caching, attack detection, localization, mobile crowdsensing and IoT privacy and security.
A Survey on Federated Learning: The Journey From Centralized to Distributed On-Site Learning and Beyond
Sawsan Abdulrahman,Hanine Tout,Hakima Ould-Slimane,Azzam Mourad,Chamseddine Talhi,Mohsen Guizani +5 more
TL;DR: In this article, a survey of federated learning (FL) topics and research fields is presented, including core system models and designs, application areas, privacy and security, and resource management.
641
Federated Learning: A Survey on Enabling Technologies, Protocols, and Applications.
TL;DR: A more thorough summary of the most relevant protocols, platforms, and real-life use-cases of FL is provided to enable data scientists to build better privacy-preserved solutions for industries in critical need of FL.
References
•Posted Content
Bolt-on Differential Privacy for Scalable Stochastic Gradient Descent-based Analytics
TL;DR: This paper revisits and uses the classical technique of output perturbation to devise a novel ``bolt-on'' approach to private SGD and provides a novel analysis of the L2-sensitivity of SGD, which allows, under the same privacy guarantees, better convergence ofSGD when only a constant number of passes can be made over the data.
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•Posted Content
On-Device Federated Learning via Blockchain and its Latency Analysis.
Hyesung Kim,Jihong Park,Mehdi Bennis,Seong-Lyun Kim +3 more
- 12 Aug 2018
TL;DR: The end-to-end learning completion latency of BlockFL is investigated, thereby yielding the optimal block generation rate as well as important insights in terms of network scalability and robustness.
127
•Proceedings Article
Bayesian Nonparametric Federated Learning of Neural Networks
Mikhail Yurochkin,Mayank Agarwal,Soumya Ghosh,Kristjan Greenewald,Trong Nghia Hoang,Yasaman Khazaeni +5 more
- 24 May 2019
TL;DR: A Bayesian nonparametric framework for federated learning with neural networks is developed that allows for a more expressive global network without additional supervision, data pooling and with as few as a single communication round.
•Posted Content
Practical Federated Gradient Boosting Decision Trees.
Qinbin Li,Zeyi Wen,Bingsheng He +2 more
TL;DR: This paper studies a practical federated environment with relaxed privacy constraints, where a dishonest party might obtain some information about the other parties' data, but it is still impossible for the dishonest party to derive the actual raw data of other parties.
•Proceedings Article
Robust Federated Learning: The Case of Affine Distribution Shifts
Amirhossein Reisizadeh,Farzan Farnia,Ramtin Pedarsani,Ali Jadbabaie +3 more
- 12 Dec 2020
TL;DR: This paper considers a structured affine distribution shift in users' data that captures the device-dependent data heterogeneity in federated settings and proposes a Federated Learning framework Robust to Affine distribution shifts (FLRA) that is provably robust against affine Wasserstein shifts to the distribution of observed samples.