Title :
Divide and Concur and Difference-Map BP Decoders for LDPC Codes
Author :
Yedidia, Jonathan S. ; Wang, Yige ; Draper, Stark C.
Author_Institution :
Mitsubishi Electr. Res. Labs., Cambridge, MA, USA
Abstract :
The “Divide and Concur” (DC) algorithm introduced by Gravel and Elser can be considered a competitor to the belief propagation (BP) algorithm, in that both algorithms can be applied to a wide variety of constraint satisfaction, optimization, and inference problems. We show that DC can be interpreted as a message-passing algorithm on a “normal” factor graph. The “difference-map” dynamics of the DC algorithm enables it to avoid “traps” which may be related to the “trapping sets” or “pseudo-codewords” that plague BP decoders of low-density parity check (LDPC) codes in the error-floor regime. We investigate two decoders for LDPC codes based on these ideas. The first decoder is based directly on DC, while the second decoder borrows the important “difference-map” concept from the DC algorithm and translates it into a BP-like decoder. We show that this “difference-map belief propagation” (DMBP) decoder has dramatically improved error-floor performance compared to standard BP decoders, while maintaining a similar computational complexity. We present simulation results for LDPC codes comparing DC and DMBP decoders with other decoders based on sum-product BP, linear programming, and mixed-integer linear programming. We also describe the close relation of the DMBP decoder to reweighted min-sum algorithms, including those recently proposed by Ruozzi and Tatikonda.
Keywords :
divide and conquer methods; linear programming; message passing; parity check codes; BP decoder; Divide and Concur algorithm; LDPC code; belief propagation algorithm; low density parity check code; message passing algorithm; mixed integer linear programming; Belief propagation (BP); error floors; graphical models; iterative algorithms; low-density parity check (LDPC) decoding; projection algorithms; reweighted max-product; reweighted min-sum;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2010.2094815