Private Hierarchical Clustering and Efficient Approximation


연구 분야: Cryptography



학회: CCSW '21: Proceedings of the 2021 on Cloud Computing Security Workshop


초록

In collaborative learning, multiple parties contribute their datasets to jointly deduce global machine learning models for numerous predictive tasks. Despite its efficacy, this learning paradigm fails to encompass critical application domains that involve highly sensitive data, such as healthcare and security analytics, where privacy risks limit entities to individually train models using only their own datasets. In this work, we target privacy-preserving collaborative hierarchical clustering. We introduce a formal security definition that aims to achieve balance between utility and privacy and present a two-party protocol that provably satisfies it. We then extend our protocol with: (i) an optimized version for single-linkage clustering, and (ii) scalable approximation variants. We implement all our schemes and experimentally evaluate their performance and accuracy on synthetic and real datasets, obtaining very encouraging results. For example, end-to-end execution of our secure approximate protocol for over 1M 10-dimensional data samples requires 35sec of computation and achieves 97.09% accuracy.


Author Profile
Xianrui Meng

Amazon Web Serivces Seattle WA USA

United States
Author Profile
Dimitrios Papadopoulos

Hong Kong University of Science and Technology Hong Kong Hong Kong

Andorra
Author Profile
Alina Mihaela Oprea

Northeastern University Boston MA USA

Morocco

📄 논문 정보

발행 연도 2021년
인용수 2
출판 국가 Morocco, Andorra, United States
사이트 ACM
좋아요 수 0

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