Bit Error and Block Error Rate Training for ML-Assisted Communication
- URL: http://arxiv.org/abs/2210.14103v1
- Date: Tue, 25 Oct 2022 15:41:21 GMT
- Title: Bit Error and Block Error Rate Training for ML-Assisted Communication
- Authors: Reinhard Wiesmayr, Gian Marti, Chris Dick, Haochuan Song, Christoph
Studer
- Abstract summary: We show that the commonly used binary cross-entropy (BCE) loss is a sensible choice in uncoded systems.
We propose new loss functions targeted at minimizing the block error rate and SNR de-weighting.
- Score: 18.341320787581836
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Even though machine learning (ML) techniques are being widely used in
communications, the question of how to train communication systems has received
surprisingly little attention. In this paper, we show that the commonly used
binary cross-entropy (BCE) loss is a sensible choice in uncoded systems, e.g.,
for training ML-assisted data detectors, but may not be optimal in coded
systems. We propose new loss functions targeted at minimizing the block error
rate and SNR de-weighting, a novel method that trains communication systems for
optimal performance over a range of signal-to-noise ratios. The utility of the
proposed loss functions as well as of SNR de-weighting is shown through
simulations in NVIDIA Sionna.
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