Density Evolution for Asymmetric Memoryless Channels
C.-C. Wang (1), S. R. Kulkarni (1), H. V. Poor (1) ((1) Princeton, University)

TL;DR
This paper extends the density evolution technique to asymmetric memoryless channels, enabling analysis of a broader class of channels and improving understanding of LDPC code performance.
Contribution
It generalizes density evolution for asymmetric channels, introduces a new iterative formula, and proves convergence properties, broadening the analytical tools for LDPC codes.
Findings
Generalization of density evolution to asymmetric channels
New iterative formula with same complexity as classical DE
Proven stability and convergence properties
Abstract
Density evolution is one of the most powerful analytical tools for low-density parity-check (LDPC) codes and graph codes with message passing decoding algorithms. With channel symmetry as one of its fundamental assumptions, density evolution (DE) has been widely and successfully applied to different channels, including binary erasure channels, binary symmetric channels, binary additive white Gaussian noise channels, etc. This paper generalizes density evolution for non-symmetric memoryless channels, which in turn broadens the applications to general memoryless channels, e.g. z-channels, composite white Gaussian noise channels, etc. The central theorem underpinning this generalization is the convergence to perfect projection for any fixed size supporting tree. A new iterative formula of the same complexity is then presented and the necessary theorems for the performance concentration…
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