NEURAL LATTICE DECODERS Academic Article uri icon

abstract

  • 2018 IEEE. Lattice decoders constructed with neural networks are presented. Firstly, we show how the fundamental parallelotope is used as a compact set for the approximation by a neural lattice decoder. Secondly, we introduce the notion of Voronoi-reduced lattice basis. As a consequence, a first optimal neural lattice decoder is built from Boolean equations and the facets of the Voronoi cell. This decoder needs no learning. Finally, we present two neural decoders with learning. It is shown that L1 regularization and a priori information about the lattice structure lead to a simplification of the model.

published proceedings

  • 2018 IEEE GLOBAL CONFERENCE ON SIGNAL AND INFORMATION PROCESSING (GLOBALSIP 2018)

author list (cited authors)

  • Corlay, V., Boutros, J. J., Ciblat, P., & Brunel, L.

citation count

  • 6

complete list of authors

  • Corlay, Vincent||Boutros, Joseph J||Ciblat, Philippe||Brunel, Loic

publication date

  • November 2018