Constant Degree Networks for Almost-Everywhere Reliable Transmission
Mitali Bafna, Dor Minzer

TL;DR
This paper constructs constant-degree networks capable of almost-everywhere reliable message transmission, combining efficiency and high fault tolerance, thus solving a longstanding open problem in fault-tolerant network design.
Contribution
It introduces a novel composition technique for networks based on graph products, enabling the creation of constant-degree, fault-tolerant networks with efficient protocols.
Findings
Constructed constant-degree networks tolerating a constant fraction of faults.
Achieved polylogarithmic work complexity in fault-tolerant protocols.
Provided a new method to combine existing networks to improve fault tolerance and efficiency.
Abstract
In the almost-everywhere reliable message transmission problem, introduced by [Dwork, Pippenger, Peleg, Upfal'86], the goal is to design a sparse communication network that supports efficient, fault-tolerant protocols for interactions between all node pairs. By fault-tolerant, we mean that that even if an adversary corrupts a small fraction of vertices in , then all but a small fraction of vertices can still communicate perfectly via the constructed protocols. Being successful to do so allows one to simulate, on a sparse graph, any fault-tolerant distributed computing task and secure multi-party computation protocols built for a complete network, with only minimal overhead in efficiency. Previous works on this problem achieved either constant-degree networks tolerating faults, constant-degree networks tolerating a constant fraction of faults via inefficient protocols…
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Taxonomy
TopicsCooperative Communication and Network Coding · Energy Harvesting in Wireless Networks · Advanced MIMO Systems Optimization
