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Efficient and Secure Quantile Aggregation of Private Data Streams

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Computing the quantile of a massive data stream has been a crucial task in networking and data management. However, existing solutions assume a centralized model where one data owner has… Click to show full abstract

Computing the quantile of a massive data stream has been a crucial task in networking and data management. However, existing solutions assume a centralized model where one data owner has access to all data. In this paper, we put forward a study of secure quantile aggregation between private data streams, where data streams owned by different parties would like to obtain a quantile of the union of their data without revealing anything else about their inputs. To this end, we designed efficient cryptographic protocols that are secure in the semi-honest setting as well as the malicious setting. By incorporating differential privacy, we further improve the efficiency by $1.1\times $ to $73.1\times $ . We implemented our protocol, which shows practical efficiency to aggregate real-world data streams efficiently.

Keywords: secure quantile; data streams; private data; secure; aggregation private; quantile aggregation

Journal Title: IEEE Transactions on Information Forensics and Security
Year Published: 2023

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