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Conference Papers Year : 2015

Compressing Communication in Distributed Protocols

Abstract

We show how to compress communication in distributed protocols in which parties do not have private inputs. More specifically, we present a generic method for converting any protocol in which parties do not have private inputs, into another protocol where each message is “short” while preserving the same number of rounds, the same communication pattern, the same output distribution, and the same resilience to error. Assuming that the output lies in some universe of size M, in our resulting protocol each message consists of only polylog(M,n,d) many bits, where n is the number of parties and d is the number of rounds. Our transformation works in the full information model, in the presence of either static or adaptive Byzantine faults. In particular, our result implies that for any such poly(n)-round distributed protocol which generates outputs in a universe of size poly(n), long messages are not needed, and messages of length polylog(n) suffice. In other words, in this regime, any distributed task that can be solved in the LOCAL model, can also be solved in the CONGEST model with the same round complexity and security guarantees. As a corollary, we conclude that for any poly(n)-round collective coin-flipping protocol, leader election protocol, or selection protocols, messages of length polylog(n) suffice (in the presence of either static or adaptive Byzantine faults).
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Dates and versions

hal-01207157 , version 1 (30-09-2015)

Identifiers

  • HAL Id : hal-01207157 , version 1

Cite

Yael Tauman Kalai, Ilan Komargodski. Compressing Communication in Distributed Protocols. DISC 2015, Toshimitsu Masuzawa; Koichi Wada, Oct 2015, Tokyo, Japan. ⟨hal-01207157⟩

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