Affiliation:
1. Hong Kong Baptist University, Hong Kong, Hong Kong
2. Guangzhou University & Guangdong Provincial Key Laboratory of Blockchain Security, Guangzhou, China
Abstract
Nearest neighbor search is a fundamental task in various domains, such as federated learning, data mining, information retrieval, and biomedicine. With the increasing need to utilize data from different organizations while respecting privacy regulations, private data federation has emerged as a promising solution. However, it is costly to directly apply existing approaches to federated k-nearest neighbor (kNN) search with difficult-to-compute distance functions, like graph or sequence similarity. To address this challenge, we propose FedKNN, a system that supports secure federated kNN search queries with a wide range of similarity measurements. Our system is equipped with a new Distribution-Aware kNN (DANN) algorithm to minimize unnecessary local computations while protecting data privacy. We further develop DANN*, a secure version of DANN that satisfies differential obliviousness. Extensive evaluations show that FedKNN outperforms state-of-the-art solutions, achieving up to 4.8× improvement on federated graph kNN search and up to 2.7× improvement on federated sequence kNN search. Additionally, our approach offers a trade-off between privacy and efficiency, providing strong privacy guarantees with minimal overhead.
Funder
NSF of Guangdong Province
NSF of China
Hong Kong Research Grants Council
Publisher
Association for Computing Machinery (ACM)
Reference55 articles.
1. 13th National People's Congress of the People's Republic of China. 2021. Personal Information Protection Law of the People's Republic of China. http://en.npc.gov.cn.cdurl.cn/2021--12/29/c_694559.htm.
2. Arvind Arasu and Raghav Kaushik. 2013. Oblivious query processing. Preprint arXiv (2013).
3. SMCQL
4. SAQE
5. Decentralised Learning in Federated Deployment Environments
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