Optimization of graph based codes for belief propagation decoding

Information Theory Workshop(2016)

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摘要
A low-density parity-check (LDPC) code is a linear block code described by a sparse parity-check matrix, which can be efficiently represented by a bipartite Tanner graph. The standard iterative decoding algorithm, known as belief propagation, passes messages along the edges of this Tanner graph. Density evolution is an efficient method to analyze the performance of the belief propagation decoding algorithm for a particular LDPC code ensemble, enabling the determination of a decoding threshold. The basic problem addressed in this work is how to optimize the Tanner graph so that the decoding threshold is as large as possible. We introduce a new code optimization technique which involves the search space range which can be thought of as minimizing randomness in differential evolution or limiting the search range in exhaustive search. This technique is applied to the design of good irregular LDPC codes and multi-edge type LDPC codes.
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关键词
block codes,graph theory,iterative decoding,linear codes,message passing,optimisation,parity check codes,search problems,sparse matrices,LDPC code,belief propagation decoding algorithm,bipartite Tanner graph,decoding threshold algorithm,density evolution,differential evolution,graph based code optimization,iterative decoding algorithm,linear block code,low-density parity-check code,message passing,sparse parity-check matrix
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