Maximum Likelihood Decoding of Quantum Error Correction Codes
Hanyan Cao, Ge Yan, Yuxuan Du, Feng Pan

TL;DR
This paper reviews recent advances in maximum likelihood decoding for quantum error correction, highlighting approaches from statistical mechanics, tensor networks, and AI to approximate optimal decoding.
Contribution
It provides a unified perspective on MLD by surveying three complementary approaches and discusses their applications, challenges, and potential for scalable quantum error correction.
Findings
Exact solutions for certain codes and noise models via statistical mechanics.
Tensor network methods achieve near-MLD accuracy with polynomial cost.
AI-based neural decoders learn to approximate MLD distributions effectively.
Abstract
Quantum error correction (QEC) is indispensable for realizing fault-tolerant quantum computation, yet its effectiveness hinges critically on the classical decoding algorithm that interprets noisy syndrome measurements. Among all possible decoding strategies, maximum likelihood decoding (MLD) is provably optimal, since it identifies the logical group with largest likelihood by summing over all possible errors within logical class consistent with the observed syndrome. Despite its optimality, MLD is computationally intractable in general (#P-hard), motivating a rich landscape of exact and approximate algorithms. In this topical review, we provide a unified perspective on MLD by surveying recent advances through three complementary lenses: statistical mechanics, tensor networks, and artificial intelligence. From the statistical mechanics viewpoint, the MLD problem maps onto evaluating…
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