USDs: A universal stabilizer decoder framework using symmetry
Hoshitaro Ohnishi, Hideo Mukai

TL;DR
This paper introduces a universal framework for stabilizer code decoding using symmetry, leveraging deep learning to improve accuracy across various quantum codes by re-optimizing decoders with continuous functions.
Contribution
It generalizes a symmetry-based re-optimization approach from the toric code to arbitrary stabilizer codes using neural networks.
Findings
Improved decoding accuracy for Color code by ~0.8% at 5% error rate.
Enhanced Golay code decoding accuracy by ~0.1%.
Continuous function approximation captures geometric and algebraic code structures.
Abstract
Quantum error correction is indispensable to achieving reliable quantum computation. When quantum information is encoded redundantly, a larger Hilbert space is constructed using multiple physical qubits, and the computation is performed within a designated subspace. When applying deep learning to the decoding of quantum error-correcting codes, a key challenge arises from the non-uniqueness between the syndrome measurements provided to the decoder and the corresponding error patterns that constitute the ground-truth labels. Building upon prior work that addressed this issue for the toric code by re-optimizing the decoder with respect to the symmetry inherent in the parity-check structure, we generalize this approach to arbitrary stabilizer codes. In our experiments, we employed multilayer perceptrons to approximate continuous functions that complement the syndrome measurements of the…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Quantum-Dot Cellular Automata
