CRQUANT-PHJun 4, 2021

Quantum Reduction of Finding Short Code Vectors to the Decoding Problem

arXiv:2106.02747v219 citations
Originality Highly original
AI Analysis

This work addresses a fundamental problem in coding theory and cryptography by establishing a novel reduction, though it is incremental as it adapts existing lattice-based techniques to codes.

The authors tackled the problem of finding short codewords in random linear codes by providing the first quantum reduction to decoding in the Hamming metric, achieving this through adaptations like using a large decoding radius and a truncated Bernoulli distribution.

We give a quantum reduction from finding short codewords in a random linear code to decoding for the Hamming metric. This is the first time such a reduction (classical or quantum) has been obtained. Our reduction adapts to linear codes Stehlé-Steinfield-Tanaka-Xagawa' re-interpretation of Regev's quantum reduction from finding short lattice vectors to solving the Closest Vector Problem. The Hamming metric is a much coarser metric than the Euclidean metric and this adaptation has needed several new ingredients to make it work. For instance, in order to have a meaningful reduction it is necessary in the Hamming metric to choose a very large decoding radius and this needs in many cases to go beyond the radius where decoding is always unique. Another crucial step for the analysis of the reduction is the choice of the errors that are being fed to the decoding algorithm. For lattices, errors are usually sampled according to a Gaussian distribution. However, it turns out that the Bernoulli distribution (the analogue for codes of the Gaussian) is too much spread out and cannot be used, as such, for the reduction with codes. This problem was solved by using instead a truncated Bernoulli distribution.

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