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Published July 2004 | Published
Book Section - Chapter Open

Statistical approach to ML decoding of linear block codes on symmetric channels

Abstract

Maximum-likelihood (ML) decoding of linear block codes on a symmetric channel is studied. Exact ML decoding is known to be computationally difficult. We propose an algorithm that finds the exact solution to the ML decoding problem by performing a depth-first search on a tree. The tree is designed from the code generator matrix and pruned based on the statistics of the channel noise. The complexity of the algorithm is a random variable. We characterize the complexity by means of its first moment, which for binary symmetric channels we find in closed-form. The obtained results indicate that the expected complexity of the algorithm is low over a wide range of system parameters.

Additional Information

© 2004 IEEE. This work was supported in part by the National Science Foundation under grant no. CCR-0133818, by the Office of Naval Research under grant no. N00014-02-1-0578, and by Caltech's Lee Center for Advanced Networking.

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Statistical_approach_to_ML_decoding_of_linear_block_codes_on_symmetric_channels.pdf

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Created:
August 19, 2023
Modified:
March 5, 2024