29 research outputs found

    Tree-Based Construction of LDPC Codes Having Good Pseudocodeword Weights

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    We present a tree-based construction of LDPC codes that have minimum pseudocodeword weight equal to or almost equal to the minimum distance, and perform well with iterative decoding. The construction involves enumerating a dd-regular tree for a fixed number of layers and employing a connection algorithm based on permutations or mutually orthogonal Latin squares to close the tree. Methods are presented for degrees d=psd=p^s and d=ps+1d = p^s+1, for pp a prime. One class corresponds to the well-known finite-geometry and finite generalized quadrangle LDPC codes; the other codes presented are new. We also present some bounds on pseudocodeword weight for pp-ary LDPC codes. Treating these codes as pp-ary LDPC codes rather than binary LDPC codes improves their rates, minimum distances, and pseudocodeword weights, thereby giving a new importance to the finite geometry LDPC codes where p>2p > 2.Comment: Submitted to Transactions on Information Theory. Submitted: Oct. 1, 2005; Revised: May 1, 2006, Nov. 25, 200

    Distance Properties of Short LDPC Codes and their Impact on the BP, ML and Near-ML Decoding Performance

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    Parameters of LDPC codes, such as minimum distance, stopping distance, stopping redundancy, girth of the Tanner graph, and their influence on the frame error rate performance of the BP, ML and near-ML decoding over a BEC and an AWGN channel are studied. Both random and structured LDPC codes are considered. In particular, the BP decoding is applied to the code parity-check matrices with an increasing number of redundant rows, and the convergence of the performance to that of the ML decoding is analyzed. A comparison of the simulated BP, ML, and near-ML performance with the improved theoretical bounds on the error probability based on the exact weight spectrum coefficients and the exact stopping size spectrum coefficients is presented. It is observed that decoding performance very close to the ML decoding performance can be achieved with a relatively small number of redundant rows for some codes, for both the BEC and the AWGN channels

    Refined Upper Bounds on Stopping Redundancy of Binary Linear Codes

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    The ll-th stopping redundancy ρl(C)\rho_l(\mathcal C) of the binary [n,k,d][n, k, d] code C\mathcal C, 1≀l≀d1 \le l \le d, is defined as the minimum number of rows in the parity-check matrix of C\mathcal C, such that the smallest stopping set is of size at least ll. The stopping redundancy ρ(C)\rho(\mathcal C) is defined as ρd(C)\rho_d(\mathcal C). In this work, we improve on the probabilistic analysis of stopping redundancy, proposed by Han, Siegel and Vardy, which yields the best bounds known today. In our approach, we judiciously select the first few rows in the parity-check matrix, and then continue with the probabilistic method. By using similar techniques, we improve also on the best known bounds on ρl(C)\rho_l(\mathcal C), for 1≀l≀d1 \le l \le d. Our approach is compared to the existing methods by numerical computations.Comment: 5 pages; ITW 201
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