Litcius/Paper detail

Improved Single-Shot Decoding of Higher-Dimensional Hypergraph-Product Codes

Oscar Higgott, Nikolas P. Breuckmann

2023PRX Quantum44 citationsDOIOpen Access PDF

Abstract

In this work, we study the single-shot performance of higher-dimensional hypergraph product codes decoded using belief propagation and ordered-statistics decoding [P. Panteleev and G. Kalachev, Quantum 5, 585 (2021)]. We find that decoding data-qubit and syndrome-measurement errors together in a single stage leads to single-shot thresholds that greatly exceed all previously observed single-shot thresholds for these codes. For the three-dimensional toric code and a phenomenological noise model, our results are consistent with a sustainable threshold of 7.1% for Z errors, compared to the threshold of 2.90% previously found using a two-stage decoder [Quintavalle et al., 2021]. For the four-dimensional (4D) toric code, for which both X and Z error correction is single shot, our results are consistent with a sustainable single-shot threshold of 4.3%, which is even higher than the threshold of 2.93% for the two-dimensional toric code for the same noise model but using L rounds of stabilizer measurement. We also explore the performance of balanced-product and 4D hypergraph-product codes, which we show lead to a reduction in qubit overhead compared the surface code for phenomenological error rates as high as 1%.

Topics & Concepts

Decoding methodsHypergraphOverhead (engineering)Code (set theory)Product (mathematics)Computer scienceAlgorithmQubitError detection and correctionNoise (video)MathematicsDiscrete mathematicsPhysicsImage (mathematics)Artificial intelligenceQuantum mechanicsProgramming languageQuantumSet (abstract data type)Operating systemGeometryError Correcting Code TechniquesQuantum Computing Algorithms and ArchitectureAlgorithms and Data Compression