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Balancing Quality and Efficiency in Private Clustering with Affinity Propagation

Keller, Hannah ; Möllering, Helen ; Schneider, Thomas ; Yalame, Mohammad Hossein (2021)
Balancing Quality and Efficiency in Private Clustering with Affinity Propagation.
18th International Conference on Security and Cryptography (SECRYPT'21). virtual Conference (06.07.2021-08.07.2021)
Konferenzveröffentlichung, Bibliographie

Kurzbeschreibung (Abstract)

In many machine learning applications, training data consists of sensitive information from multiple sources. Privacy-preserving machine learning using secure computation enables multiple parties to compute on their joint data without disclosing their inputs to each other. In this work, we focus on clustering, an unsupervised machine learning technique that partitions data into groups. Previous works on privacy-preserving clustering often leak information and focus on the k-means algorithm, which provides only limited clustering quality and flexibility. Additionally, the number of clusters k must be known in advance. We analyze several prominent clustering algorithms’ capabilities and their compatibility with secure computation techniques to create an efficient, fully privacy-preserving clustering implementation superior to k-means. We find affinity propagation to be the most promising candidate and securely implement it using various multi-party computation techniques. Privacy-preserving affinity propagation does not require any input parameters and consists of operations that are relatively efficient with secure computation. We consider passive security as well as active security with an honest and dishonest majority. We offer the first comparison of privacy-preserving clustering between these scenarios, enabling an understanding of the exact trade-offs between them. Based on the clustering quality and the computational and communication costs, privacy-preserving affinity propagation offers a good trade-off between quality and efficiency for practical privacy-preserving clustering.

Typ des Eintrags: Konferenzveröffentlichung
Erschienen: 2021
Autor(en): Keller, Hannah ; Möllering, Helen ; Schneider, Thomas ; Yalame, Mohammad Hossein
Art des Eintrags: Bibliographie
Titel: Balancing Quality and Efficiency in Private Clustering with Affinity Propagation
Sprache: Englisch
Publikationsjahr: Juli 2021
Veranstaltungstitel: 18th International Conference on Security and Cryptography (SECRYPT'21)
Veranstaltungsort: virtual Conference
Veranstaltungsdatum: 06.07.2021-08.07.2021
Zugehörige Links:
Kurzbeschreibung (Abstract):

In many machine learning applications, training data consists of sensitive information from multiple sources. Privacy-preserving machine learning using secure computation enables multiple parties to compute on their joint data without disclosing their inputs to each other. In this work, we focus on clustering, an unsupervised machine learning technique that partitions data into groups. Previous works on privacy-preserving clustering often leak information and focus on the k-means algorithm, which provides only limited clustering quality and flexibility. Additionally, the number of clusters k must be known in advance. We analyze several prominent clustering algorithms’ capabilities and their compatibility with secure computation techniques to create an efficient, fully privacy-preserving clustering implementation superior to k-means. We find affinity propagation to be the most promising candidate and securely implement it using various multi-party computation techniques. Privacy-preserving affinity propagation does not require any input parameters and consists of operations that are relatively efficient with secure computation. We consider passive security as well as active security with an honest and dishonest majority. We offer the first comparison of privacy-preserving clustering between these scenarios, enabling an understanding of the exact trade-offs between them. Based on the clustering quality and the computational and communication costs, privacy-preserving affinity propagation offers a good trade-off between quality and efficiency for practical privacy-preserving clustering.

Freie Schlagworte: Engineering, E4, ATHENE, Privacy and Trust for Mobile Users A.1
Fachbereich(e)/-gebiet(e): 20 Fachbereich Informatik
20 Fachbereich Informatik > Praktische Kryptographie und Privatheit
DFG-Sonderforschungsbereiche (inkl. Transregio)
DFG-Sonderforschungsbereiche (inkl. Transregio) > Sonderforschungsbereiche
DFG-Graduiertenkollegs
DFG-Graduiertenkollegs > Graduiertenkolleg 2050 Privacy and Trust for Mobile Users
Profilbereiche
Profilbereiche > Cybersicherheit (CYSEC)
DFG-Sonderforschungsbereiche (inkl. Transregio) > Sonderforschungsbereiche > SFB 1119: CROSSING – Kryptographiebasierte Sicherheitslösungen als Grundlage für Vertrauen in heutigen und zukünftigen IT-Systemen
Hinterlegungsdatum: 01 Jul 2021 10:08
Letzte Änderung: 06 Aug 2024 12:11
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