"We present a privacy-assured multiplication protocol using which an arbitrary arithmetic formula with inputs from two parties over a finite field can be jointly computed on encrypted data using an additively homomorphic encryption scheme. Our protocol is secure against malicious adversaries. To motivate and illustrate applications of this technique, we demonstrate an attack on a class of known protocols showing how to compromise location privacy of honest users by manipulating messages in protocols with additively homomorphic encryption. We demonstrate how to apply the technique in order to solve different problems in geometric applications. We evaluate our approach using a prototypical implementation. The results show that the added overhead of our approach is small compared to insecure outsourced multiplication. © 2018-IOS Press and the authors. All rights reserved."
Data privacy ; Geometric applications ; Ho-momorphic encryptions ; Homomorphic Encryption Schemes ; Location privacy ; Malicious adversaries ; Privacy enhancing technologies ; Prototypical implementation ; Secure multi-party computation ; Cryptography ; Location privacy ; Privacy-enhancing technologies ; Secure multi-party computation ;
Enlace a la fuentehttps://www.scopus.com/inward/record.uri?eid=2-s2.0-85050381101&doi=10.3233%2fJC...
Este ítem aparece en las siguientes colecciones
- Artículos