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In this paper, we propose an “arbitrarily varying channel” (AVC) approach to study the capacity of non-coherent transmission in a network that employs randomized linear network coding. The network operation is modeled by a matrix channel over a finite field where the transfer matrix changes arbitrarily from time-slot to time-slot but up to a known distribution over its rank. By extending the AVC results to this setup, we characterize the capacity of such a non-coherent transmission scheme and show that subspace coding is optimal for achieving the capacity. By imposing a probability distribution over the state space of an AVC, we obtain a channel which we called “partially arbitrarily varying channel” (PAVC). In this work, we characterize the “randomized” as well as the “deterministic” code capacity of a PAVC under the average error probability criterion. Although we introduce the PAVC to model the non-coherent network coding, this extension to an AVC might be of its own interest as well.
Michael Christoph Gastpar, Sung Hoon Lim, Adriano Pastore, Chen Feng
Fabio Nobile, Sebastian Krumscheid, Sundar Subramaniam Ganesh
Olivier Sauter, Yiming Li, Ambrogio Fasoli, Basil Duval, Jonathan Graves, Duccio Testa, Patrick Blanchard, Alessandro Pau, Federico Alberto Alfredo Felici, Cristian Sommariva, Antoine Pierre Emmanuel Alexis Merle, Haomin Sun, Michele Marin, Henri Weisen, Richard Pitts, Yann Camenen, Jan Horacek, Javier García Hernández, Marco Wischmeier, Nicola Vianello, Mikhail Maslov, Federico Nespoli, Yao Zhou, Davide Galassi, Antonio José Pereira de Figueiredo, Hamish William Patten, Samuel Lanthaler, Emiliano Fable, Francesca Maria Poli, Daniele Brunetti, Anna Teplukhina, Alberto Mariani, Kenji Tanaka, Bernhard Sieglin, Otto Asunta, Gergely Papp, Leonardo Pigatto