Learning Maximum Margin Channel Decoders
Amit Tsvieli, Nir Weinberger

TL;DR
This paper introduces a novel maximum margin learning framework for channel decoders in additive noise and non-linear channels, using regularized loss minimization inspired by SVMs, with theoretical error bounds and practical algorithms.
Contribution
It develops a maximum margin learning approach for channel decoders with theoretical error bounds and efficient algorithms for both additive noise and non-linear channels.
Findings
Theoretical generalization error bounds are derived for both channel models.
A stochastic sub-gradient descent algorithm effectively solves the proposed optimization problems.
The algorithms demonstrate strong performance in simulated examples.
Abstract
The problem of learning a channel decoder is considered for two channel models. The first model is an additive noise channel whose noise distribution is unknown and nonparametric. The learner is provided with a fixed codebook and a dataset comprised of independent samples of the noise, and is required to select a precision matrix for a nearest neighbor decoder in terms of the Mahalanobis distance. The second model is a non-linear channel with additive white Gaussian noise and unknown channel transformation. The learner is provided with a fixed codebook and a dataset comprised of independent input-output samples of the channel, and is required to select a matrix for a nearest neighbor decoder with a linear kernel. For both models, the objective of maximizing the margin of the decoder is addressed. Accordingly, for each channel model, a regularized loss minimization problem with a…
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Taxonomy
TopicsWireless Signal Modulation Classification · Distributed Sensor Networks and Detection Algorithms · Face and Expression Recognition
