A Probabilistic Peeling Decoder to Efficiently Analyze Generalized LDPC Codes Over the BEC
Yanfang Liu, Pablo M. Olmos, Tobias Koch

TL;DR
This paper introduces a probabilistic peeling decoder (P-PD) for analyzing generalized LDPC codes over the BEC, enabling efficient performance prediction and optimization of code parameters.
Contribution
The paper proposes the P-PD algorithm to incorporate bounded-distance and ML decoding at GC nodes without complex degree distributions, improving analysis accuracy.
Findings
P-PD accurately predicts GLDPC code performance under ML decoding.
Optimal GC node fraction is less than one for capacity gap reduction.
Random puncturing and variable node inclusion further improve performance.
Abstract
In this paper, we analyze the tradeoff between coding rate and asymptotic performance of a class of generalized low-density parity-check (GLDPC) codes constructed by including a certain fraction of generalized constraint (GC) nodes in the graph. The rate of the GLDPC ensemble is bounded using classical results on linear block codes, namely Hamming bound and Varshamov bound. We also study the impact of the decoding method used at GC nodes. To incorporate both bounded-distance (BD) and Maximum Likelihood (ML) decoding at GC nodes into our analysis without resorting on multi-edge type of degree distributions (DDs), we propose the probabilistic peeling decoding (P-PD) algorithm, which models the decoding step at every GC node as an instance of a Bernoulli random variable with a successful decoding probability that depends on both the GC block code as well as its decoding algorithm. The P-PD…
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