Vukan Ninkovic, Ognjen Kundacina, Dejan Vukobratovic, Christian Häger, Alexandre Graell i Amat
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Decoding Quantum LDPC Codes Using Graph Neural Networks
In this paper, we propose a novel decoding method for Quantum Low-Density
Parity-Check (QLDPC) codes based on Graph Neural Networks (GNNs). Similar to
the Belief Propagation (BP)-based QLDPC decoders, the proposed GNN-based QLDPC
decoder exploits the sparse graph structure of QLDPC codes and can be
implemented as a message-passing decoding algorithm. We compare the proposed
GNN-based decoding algorithm against selected classes of both conventional and
neural-enhanced QLDPC decoding algorithms across several QLDPC code designs.
The simulation results demonstrate excellent performance of GNN-based decoders
along with their low complexity compared to competing methods.