Discriminated Belief Propagation
Uli Sorger

TL;DR
This paper introduces a generalized iterative decoding method using discriminators to transfer richer information, improving decoding performance for a broader class of codes while maintaining low complexity.
Contribution
It proposes a novel decoding algorithm that extends belief propagation by incorporating discriminators, enabling near-optimal decoding for more code types.
Findings
Discriminators improve decoding resolution within specific code regions.
The new method approximates overall symbol probabilities effectively.
Low complexity implementation is feasible with a Gauss approximation.
Abstract
Near optimal decoding of good error control codes is generally a difficult task. However, for a certain type of (sufficiently) good codes an efficient decoding algorithm with near optimal performance exists. These codes are defined via a combination of constituent codes with low complexity trellis representations. Their decoding algorithm is an instance of (loopy) belief propagation and is based on an iterative transfer of constituent beliefs. The beliefs are thereby given by the symbol probabilities computed in the constituent trellises. Even though weak constituent codes are employed close to optimal performance is obtained, i.e., the encoder/decoder pair (almost) achieves the information theoretic capacity. However, (loopy) belief propagation only performs well for a rather specific set of codes, which limits its applicability. In this paper a generalisation of iterative decoding…
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Taxonomy
TopicsError Correcting Code Techniques · Bayesian Modeling and Causal Inference · Algorithms and Data Compression
