Gaussian Channel Simulation with Rotated Dithered Quantization
Szymon Kobus, Imperial College London, United Kingdom; Lucas Theis, Google DeepMind, United Kingdom; Deniz Gündüz, Imperial College London, United Kingdom
Session:
Channel Synthesis and Coordination
Track:
7: Network Information Theory
Location:
Omikron I
Presentation Time:
Wed, 10 Jul, 11:30 - 11:50
Session Chair:
Tobias Oechtering, KTH
Abstract
Channel simulation involves generating a sample $Y$ from the conditional distribution $P_{Y|X}$, where $X$ is a remote realization sampled from $P_X$. This paper introduces a novel approach to approximate Gaussian channel simulation using dithered quantization. Our method concurrently simulates $n$ channels, reducing the upper bound on the excess information by half compared to one-dimensional methods. When used with higher-dimensional lattices, our approach achieves up to six times reduction on the upper bound. Furthermore, we demonstrate that the KL divergence between the distributions of the simulated and Gaussian channels decreases with the number of dimensions at a rate of $O(n^{-1})$.