Arbitrarily Varying Networks: Capacity-achieving Computationally Efficient Codes
Abstract
We consider the problem of communication over a network containing a hidden and malicious adversary that can control a subset of network resources, and aims to disrupt communications. We focus on omniscient node-based adversaries, i.e., the adversaries can control a subset of nodes, and know the message, network code and packets on all links. Characterizing information-theoretically optimal communication rates as a function of network parameters and bounds on the adversarially controlled network is in general open, even for unicast (single source, single destination) problems. In this work we characterize the information-theoretically optimal randomized capacity of such problems, i.e., under the assumption that the source node shares (an asymptotically negligible amount of) independent common randomness with each network node a priori (for instance, as part of network design). We propose a novel computationally-efficient communication scheme whose rate matches a natural information-theoretically "erasure outer bound" on the optimal rate. Our schemes require no prior knowledge of network topology, and can be implemented in a distributed manner as an overlay on top of classical distributed linear network coding.
Cite
@article{arxiv.1605.01834,
title = {Arbitrarily Varying Networks: Capacity-achieving Computationally Efficient Codes},
author = {Peida Tian and Sidharth Jaggi and Mayank Bakshi and Oliver Kosut},
journal= {arXiv preprint arXiv:1605.01834},
year = {2016}
}
Comments
13 pages, 7 figures, long version of ISIT paper