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We present a unified graphical model framework for describing compound codes and deriving iterative decoding algorithms. After reviewing a variety of graphical models (Markov random fields, Tanner graphs, and Bayesian networks), we derive a general distributed marginalization algorithm for functions described by factor graphs. From this general algorithm, Pearl's (1986) belief propagation algorithm is easily derived as a special case. We point out that iterative decoding algorithms for various codes, including "turbo decoding" of parallel-concatenated convolutional codes, may be viewed as probability propagation in a graphical model of the code. We focus on Bayesian network descriptions of codes, which give a natural input/state/output/channel description of a code and channel, and we indicate how iterative decoders can be developed for parallel-and serially concatenated coding systems, product codes, and low-density parity-check codes.
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Frank R. Kschischang
Brendan J. Frey
IEEE Journal on Selected Areas in Communications
Massachusetts Institute of Technology
University of Toronto
University of Illinois Urbana-Champaign
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Kschischang et al. (Thu,) studied this question.
www.synapsesocial.com/papers/6a09834ba9b588564434322a — DOI: https://doi.org/10.1109/49.661110