TY - GEN
T1 - Achieving Secure and Differentially Private Computations in Multiparty Settings
AU - Acar, Abbas
AU - Celik, Z. Berkay
AU - Aksu, Hidayet
AU - Uluagac, A. Selcuk
AU - McDaniel, Patrick
N1 - Publisher Copyright:
© 2017 IEEE.
PY - 2017/12/4
Y1 - 2017/12/4
N2 - Sharing and working on sensitive data in distributed settings from healthcare to finance is a major challenge due to security and privacy concerns. Secure multiparty computation (SMC) is a viable panacea for this, allowing distributed parties to make computations while the parties learn nothing about their data, but the final result. Although SMC is instrumental in such distributed settings, it does not provide any guarantees not to leak any information about individuals to adversaries. Differential privacy (DP) can be utilized to address this; however, achieving SMC with DP is not a trivial task, either. In this paper, we propose a novel Secure Multiparty Distributed Differentially Private (SM-DDP) protocol to achieve secure and private computations in a multiparty environment. Specifically, with our protocol, we simultaneously achieve SMC and DP in distributed settings focusing on linear regression on horizontally distributed data. That is, parties do not see each others' data and further, can not infer information about individuals from the final constructed statistical model. Any statistical model function that allows independent calculation of local statistics can be computed through our protocol. The protocol implements homomorphic encryption for SMC and functional mechanism for DP to achieve the desired security and privacy guarantees. In this work, we first introduce the theoretical foundation for the SM-DDP protocol and then evaluate its efficacy and performance on two different datasets. Our results show that one can achieve individual-level privacy through the proposed protocol with distributed DP, which is independently applied by each party in a distributed fashion. Moreover, our results also show that the SM-DDP protocol incurs minimal computational overhead, is scalable, and provides security and privacy guarantees.
AB - Sharing and working on sensitive data in distributed settings from healthcare to finance is a major challenge due to security and privacy concerns. Secure multiparty computation (SMC) is a viable panacea for this, allowing distributed parties to make computations while the parties learn nothing about their data, but the final result. Although SMC is instrumental in such distributed settings, it does not provide any guarantees not to leak any information about individuals to adversaries. Differential privacy (DP) can be utilized to address this; however, achieving SMC with DP is not a trivial task, either. In this paper, we propose a novel Secure Multiparty Distributed Differentially Private (SM-DDP) protocol to achieve secure and private computations in a multiparty environment. Specifically, with our protocol, we simultaneously achieve SMC and DP in distributed settings focusing on linear regression on horizontally distributed data. That is, parties do not see each others' data and further, can not infer information about individuals from the final constructed statistical model. Any statistical model function that allows independent calculation of local statistics can be computed through our protocol. The protocol implements homomorphic encryption for SMC and functional mechanism for DP to achieve the desired security and privacy guarantees. In this work, we first introduce the theoretical foundation for the SM-DDP protocol and then evaluate its efficacy and performance on two different datasets. Our results show that one can achieve individual-level privacy through the proposed protocol with distributed DP, which is independently applied by each party in a distributed fashion. Moreover, our results also show that the SM-DDP protocol incurs minimal computational overhead, is scalable, and provides security and privacy guarantees.
UR - http://www.scopus.com/inward/record.url?scp=85046546817&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85046546817&partnerID=8YFLogxK
U2 - 10.1109/PAC.2017.12
DO - 10.1109/PAC.2017.12
M3 - Conference contribution
AN - SCOPUS:85046546817
T3 - Proceedings - 2017 IEEE Symposium on Privacy-Aware Computing, PAC 2017
SP - 49
EP - 59
BT - Proceedings - 2017 IEEE Symposium on Privacy-Aware Computing, PAC 2017
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 1st IEEE Symposium on Privacy-Aware Computing, PAC 2017
Y2 - 1 August 2017 through 3 August 2017
ER -