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Information-Geometrical Significance of Sparsity in Gallager Codes

Neural Information Processing Systems

We report a result of perturbation analysis on decoding error of the belief propagation decoder for Gallager codes. The analysis is based on infor- mation geometry, and it shows that the principal term of decoding error at equilibrium comes from the m-embedding curvature of the log-linear submanifold spanned by the estimated pseudoposteriors, one for the full marginal, and K for partial posteriors, each of which takes a single check into account, where K is the number of checks in the Gallager code. It is then shown that the principal error term vanishes when the parity-check matrix of the code is so sparse that there are no two columns with overlap greater than 1.


Information-Geometrical Significance of Sparsity in Gallager Codes

Tanaka, Toshiyuki, Ikeda, Shiro, Amari, Shun-ichi

Neural Information Processing Systems

We report a result of perturbation analysis on decoding error of the belief propagation decoder for Gallager codes. The analysis is based on information geometry,and it shows that the principal term of decoding error at equilibrium comes from the m-embedding curvature of the log-linear submanifold spanned by the estimated pseudoposteriors, one for the full marginal, and K for partial posteriors, each of which takes a single check into account, where K is the number of checks in the Gallager code. It is then shown that the principal error term vanishes when the parity-check matrix of the code is so sparse that there are no two columns with overlap greater than 1.


Information-Geometrical Significance of Sparsity in Gallager Codes

Tanaka, Toshiyuki, Ikeda, Shiro, Amari, Shun-ichi

Neural Information Processing Systems

We report a result of perturbation analysis on decoding error of the belief propagation decoder for Gallager codes. The analysis is based on information geometry, and it shows that the principal term of decoding error at equilibrium comes from the m-embedding curvature of the log-linear submanifold spanned by the estimated pseudoposteriors, one for the full marginal, and K for partial posteriors, each of which takes a single check into account, where K is the number of checks in the Gallager code. It is then shown that the principal error term vanishes when the parity-check matrix of the code is so sparse that there are no two columns with overlap greater than 1.


Information-Geometrical Significance of Sparsity in Gallager Codes

Tanaka, Toshiyuki, Ikeda, Shiro, Amari, Shun-ichi

Neural Information Processing Systems

We report a result of perturbation analysis on decoding error of the belief propagation decoder for Gallager codes. The analysis is based on information geometry, and it shows that the principal term of decoding error at equilibrium comes from the m-embedding curvature of the log-linear submanifold spanned by the estimated pseudoposteriors, one for the full marginal, and K for partial posteriors, each of which takes a single check into account, where K is the number of checks in the Gallager code. It is then shown that the principal error term vanishes when the parity-check matrix of the code is so sparse that there are no two columns with overlap greater than 1.


Error-correcting Codes on a Bethe-like Lattice

Vicente, Renato, Saad, David, Kabashima, Yoshiyuki

Neural Information Processing Systems

We analyze Gallager codes by employing a simple mean-field approximation thatdistorts the model geometry and preserves important interactions between sites. The method naturally recovers the probability propagation decodingalgorithm as an extremization of a proper free-energy. We find a thermodynamic phase transition that coincides with information theoreticalupper-bounds and explain the practical code performance in terms of the free-energy landscape.


Error-correcting Codes on a Bethe-like Lattice

Vicente, Renato, Saad, David, Kabashima, Yoshiyuki

Neural Information Processing Systems

We analyze Gallager codes by employing a simple mean-field approximation that distorts the model geometry and preserves important interactions between sites. The method naturally recovers the probability propagation decoding algorithm as an extremization of a proper free-energy. We find a thermodynamic phase transition that coincides with information theoretical upper-bounds and explain the practical code performance in terms of the free-energy landscape.


Error-correcting Codes on a Bethe-like Lattice

Vicente, Renato, Saad, David, Kabashima, Yoshiyuki

Neural Information Processing Systems

We analyze Gallager codes by employing a simple mean-field approximation that distorts the model geometry and preserves important interactions between sites. The method naturally recovers the probability propagation decoding algorithm as an extremization of a proper free-energy. We find a thermodynamic phase transition that coincides with information theoretical upper-bounds and explain the practical code performance in terms of the free-energy landscape.