DocumentCode :
169428
Title :
How to securely compute the modulo-two sum of binary sources
Author :
Data, Deepesh ; Dey, Bikash Kumar ; Mishra, Mahesh K. ; Prabhakaran, Vinod M.
Author_Institution :
TIFR, Mumbai, India
fYear :
2014
fDate :
2-5 Nov. 2014
Firstpage :
496
Lastpage :
500
Abstract :
In secure multiparty computation, mutually distrusting users in a network want to collaborate to compute functions of data which is distributed among the users. The users should not learn any additional information about the data of others than what they may infer from their own data and the functions they are computing. Previous works have mostly considered the worst case context (i.e., without assuming any distribution for the data); Lee and Abbe (2014) is a notable exception. Here, we study the average case (i.e., we work with a distribution on the data) where correctness and privacy is only desired asymptotically. For concreteness and simplicity, we consider a secure version of the function computation problem of Körner and Marton (1979) where two users observe a doubly symmetric binary source with parameter p and the third user wants to compute the XOR. We show that the amount of communication and randomness resources required depends on the level of correctness desired. When zero-error and perfect privacy are required, the results of Data et al. (2014) show that it can be achieved if and only if a total rate of 1 bit is communicated between every pair of users and private randomness at the rate of 1 is used up. In contrast, we show here that, if we only want the probability of error to vanish asymptotically in blocklength, it can be achieved by a lower rate (binary entropy of p) for all the links and for private randomness; this also guarantees perfect privacy. We also show that no smaller rates are possible even if privacy is only required asymptotically.
Keywords :
data privacy; distributed processing; XOR; binary sources; data privacy; distributed processing; modulo-two sum; perfect privacy; secure multiparty computation; zero-error; Data privacy; Distributed databases; Privacy; Protocols; Random variables; Vectors; Zinc;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Information Theory Workshop (ITW), 2014 IEEE
Conference_Location :
Hobart, TAS
ISSN :
1662-9019
Type :
conf
DOI :
10.1109/ITW.2014.6970881
Filename :
6970881
Link To Document :
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