Performance Bounds and Degree-Distribution Optimization of Finite-Length BATS Codes
Mingyang Zhu, Shenghao Yang, Ming Jiang, Chunming Zhao

TL;DR
This paper provides a comprehensive analysis of finite-length BATS codes with precoding, deriving error bounds for joint decoding methods, and optimizes degree distributions to significantly reduce transmission overhead.
Contribution
It introduces joint decoding error bounds for BATS codes with precoding and formulates an optimization for degree distribution to enhance performance.
Findings
Derived closed-form upper bounds for joint BP and ML decoding error probabilities.
Optimized degree distribution reduces transmission overhead by over 50%.
Validated bounds and optimization through extensive simulations.
Abstract
Batched sparse (BATS) codes were proposed as a reliable communication solution for networks with packet loss. In the finite-length regime, the error probability of BATS codes under belief propagation (BP) decoding has been studied in the literature and can be analyzed by recursive formulae. However, all existing analyses have not considered precoding or have treated the BATS code and the precode as two separate entities. In this paper, we analyze the word-wise error probability of finite-length BATS codes with a precode under joint decoding, including BP decoding and maximum-likelihood (ML) decoding. The joint BP decoder performs peeling decoding on a joint Tanner graph constructed from both the BATS and the precode Tanner graphs, and the joint ML decoder solves a single linear system with all linear constraints implied by the BATS code and the precode. We derive closed-form upper…
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