Title
An Effective Learning Scheme for Weighted-BP with Parallel Permutation Decoding
Abstract
Weighted-BP is a method to improve the decoding performance of belief-propagation (BP) by learning its appropriate message weights using deep learning technique. For binary primitive BCH codes, it has been reported in literature that their performance can be enhanced more through parallel decoding which is achieved by exploiting the automorphism property of the codes. In this paper, an effective learning scheme for the parallel weighted-BP is proposed. While in the conventional work the weights preliminarily learned for a single weighted-BP were utilized as is even in the scenario of parallel decoding, we show that some gain can be further obtained if we take the parallel structure into account in the learning phase.
Year
Venue
Keywords
2020
2020 International Symposium on Information Theory and Its Applications (ISITA)
weighted-BP,parallel permutation decoding,decoding performance,appropriate message weights,deep learning technique,binary primitive BCH codes,parallel decoding,effective learning scheme
DocType
ISSN
ISBN
Conference
2689-5838
978-1-7281-2855-9
Citations 
PageRank 
References 
0
0.34
0
Authors
5
Name
Order
Citations
PageRank
Ryota Yoshizawa100.34
Kenichiro Furuta200.34
Yuma Yoshinaga300.34
Osamu Torii400.34
Tomoya Kodama500.34