Learning Channel Codes from Data: Performance Guarantees in the Finite Blocklength Regime
This paper examines the maximum code rate achievable by a data-driven communication system over some unknown discrete memoryless channel in the finite blocklength regime. A class of channel codes, called learning-based channel codes, is first introduced. Learning-based channel codes include a learni...
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Zusammenfassung: | This paper examines the maximum code rate achievable by a data-driven
communication system over some unknown discrete memoryless channel in the
finite blocklength regime. A class of channel codes, called learning-based
channel codes, is first introduced. Learning-based channel codes include a
learning algorithm to transform the training data into a pair of encoding and
decoding functions that satisfy some statistical reliability constraint.
Data-dependent achievability and converse bounds in the non-asymptotic regime
are established for this class of channel codes. It is shown analytically that
the asymptotic expansion of the bounds for the maximum achievable code rate of
the learning-based channel codes are tight for sufficiently large training
data. |
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DOI: | 10.48550/arxiv.2304.10033 |