A Survey on Federated Analytics: Taxonomy, Enabling Techniques, Applications and Open Issues
Zibo Wang, Haichao Ji, Yifei Zhu, Dan Wang, Zhu Han

TL;DR
This survey comprehensively reviews federated analytics, covering its taxonomy, enabling techniques, diverse applications, challenges, and future research directions to advance privacy-preserving distributed data processing.
Contribution
It provides the first thorough overview of federated analytics, including key concepts, taxonomy, applications, challenges, and open issues, fostering further research in privacy-preserving data analysis.
Findings
Identifies key challenges in federated analytics.
Classifies federated analytics into a comprehensive taxonomy.
Highlights open research issues and future directions.
Abstract
The escalating influx of data generated by networked edge devices, coupled with the growing awareness of data privacy, has restricted the traditional data analytics workflow, where the edge data are gathered by a centralized server to be further utilized by data analysts. To continue leveraging vast edge data to support various data-incentive applications, computing paradigms have promoted a transformative shift from centralized data processing to privacy-preserved distributed data processing. The need to perform data analytics on private edge data motivates federated analytics (FA), an emerging technique to support collaborative data analytics among diverse data owners without centralizing the raw data. Despite the wide applications of FA in industry and academia, a comprehensive examination of existing research efforts in FA has been notably absent. This survey aims to bridge this gap…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
