JOURNAL ARTICLE

Shuffled Differentially Private Federated Learning for Time Series Data Analytics

Abstract

Trustworthy federated learning aims to achieve optimal performance while ensuring clients' privacy. Existing privacy-preserving federated learning approaches are mostly tailored for image data, lacking applications for time series data, which have many important applications, like machine health monitoring, human activity recognition, etc. Furthermore, protective noising on a time series data analytics model can significantly interfere with temporal-dependent learning, leading to a greater decline in accuracy. To address these issues, we develop a privacy-preserving federated learning algorithm for time series data. Specifically, we employ local differential privacy to extend the privacy protection trust boundary to the clients. We also incorporate shuffle techniques to achieve a privacy amplification, mitigating the accuracy decline caused by leveraging local differential privacy. Extensive experiments were conducted on five time series datasets. The evaluation results reveal that our algorithm experienced minimal accuracy loss compared to non-private federated learning in both small and large client scenarios. Under the same level of privacy protection, our algorithm demonstrated improved accuracy compared to the centralized differentially private federated learning in both scenarios.

Keywords:
Differential privacy Computer science Federated learning Analytics Trustworthiness Machine learning Information privacy Time series Artificial intelligence Data mining Private information retrieval Series (stratigraphy) Computer security

Metrics

1
Cited By
0.26
FWCI (Field Weighted Citation Impact)
29
Refs
0.56
Citation Normalized Percentile
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Citation History

Topics

Privacy-Preserving Technologies in Data
Physical Sciences →  Computer Science →  Artificial Intelligence
Traffic Prediction and Management Techniques
Physical Sciences →  Engineering →  Building and Construction
Cryptography and Data Security
Physical Sciences →  Computer Science →  Artificial Intelligence

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