Optimal Decoding with the Worm
Zac Tobias, Nikolas P. Breuckmann, Benedikt Placke

TL;DR
This paper introduces a new approximate optimal decoder called the worm algorithm for matchable qLDPC codes, demonstrating its efficiency and improved decoding thresholds through theoretical guarantees and numerical simulations.
Contribution
The paper presents a novel Markov Chain Monte Carlo based decoder for matchable qLDPC codes, with rigorous mixing time analysis and practical effectiveness shown in simulations.
Findings
Efficient decoding demonstrated for surface and hyperbolic surface codes.
The worm decoder achieves higher thresholds under depolarizing noise.
Theoretical mixing time bounds relate to defect susceptibility.
Abstract
We propose a new decoder for "matchable'' qLDPC codes that uses a Markov Chain Monte Carlo algorithm - called the worm algorithm - to approximately compute the probabilities of logical error classes given a syndrome. The algorithm hence performs (approximate) optimal decoding, and we expect it to be computationally efficient in certain settings. The algorithm is applicable to decoding random errors for the surface code, the honeycomb Floquet code, and hyperbolic surface codes with constant rate, in all cases with and without measurement errors. The efficiency of the decoder hinges on the mixing time of the underlying Markov chain. We give a rigorous mixing time guarantee in terms of a quantity that we call the defect susceptibility. We connect this quantity to the notion of disorder operators in statistical mechanics and use this to argue (non-rigorously) that the algorithm is efficient…
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Taxonomy
TopicsMarkov Chains and Monte Carlo Methods · Advanced Data Storage Technologies · Mathematical Approximation and Integration
