Abstract
In the problem of private "swarm" computing, n agents wish to securely and distributively perform a computation on common inputs, in such a way that even if the entire memory contents of some of them are exposed, no information is revealed about the state of the computation. Recently, Dolev, Garay, Gilboa and Kolesnikov [Innov. Comput. Sci. (2011), 32-44] considered this problem in the setting of information-theoretic security, showing how to perform such computations on input streams of unbounded length. However, the cost of their solution is exponential in the size of the finite state automaton (FSA) computing the function. In this work we are interested in an efficient (i.e., polynomial time) computation of the above model, at the expense of minimal additional assumptions. Relying on the existence of one-way functions, we show how to process unbounded inputs (polynomial in the security parameter) at a cost linear in m, the number of FSA states. In particular, our algorithms achieve the following: In the case of (n,n)-reconstruction (i.e., in which all n agents participate in the reconstruction of the distributed computation) and at most n - 1 agents are corrupted, the time required to process each input symbol and the time complexity for reconstruction are O(mn), while agent storage is O(m+n). In the case of (n-t,n)-reconstruction (where only n-t agents take part in the reconstruction) and at most t agents are corrupted, the agents' storage is O(n-1n-t) + m), the time required to process each input symbol is O(m(n-1n-t) and the time complexity of reconstruction is O(mt). We achieve the above through a carefully orchestrated use of pseudo-random generators and secret-sharing, and in particular a novel share re-randomization technique which might be of independent interest.
Original language | American English |
---|---|
Pages (from-to) | 79-94 |
Number of pages | 16 |
Journal | Journal of Mathematical Cryptology |
Volume | 9 |
Issue number | 2 |
DOIs | |
State | Published - 1 Jun 2015 |
Keywords
- Secure multiparty computation
- privacy in computing
All Science Journal Classification (ASJC) codes
- Computer Science Applications
- Computational Mathematics
- Applied Mathematics