Local-Optimality Guaranties for Optimal Decoding Based on Paths

Turbo Codes and Iterative Information Processing(2012)

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摘要
This paper presents a unified analysis framework that captures recent advances in the study of local-optimality characterizations for codes on graphs. These local-optimality characterizations are based on combinatorial structures embedded in the Tanner graph of the code. Local-optimality implies both unique maximum-likelihood (ML) optimality and unique linear-programming (LP) decoding optimality. Also, an iterative message-passing decoding algorithm is guaranteed to find the unique locally-optimal codeword, if one exists. We demonstrate this proof technique by considering a definition of local-optimality that is based on the simplest combinatorial structures in Tanner graphs, namely, paths of length $h$. We apply the technique of local-optimality to a family of Tanner codes. Inverse polynomial bounds in the code length are proved on the word error probability of LP-decoding for this family of Tanner codes.
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关键词
graph theory,iterative decoding,linear programming,maximum likelihood decoding,polynomials,theorem proving,LP decoding,Tanner code,Tanner graph,combinatorial structure,inverse polynomial bound,iterative message passing decoding algorithm,linear programming,locally optimal codeword,maximum likelihood decoding,optimal decoding,proof technique,word error probability
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