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An Improved Quantum Algorithm for 3-Tuple Lattice Sieving

Quantum Physics 2025-12-03 v2 Cryptography and Security

Abstract

The assumed hardness of the Shortest Vector Problem in high-dimensional lattices is one of the cornerstones of post-quantum cryptography. The fastest known heuristic attacks on SVP are via so-called sieving methods. While these still take exponential time in the dimension dd, they are significantly faster than non-heuristic approaches and their heuristic assumptions are verified by extensive experiments. kk-Tuple sieving is an iterative method where each iteration takes as input a large number of lattice vectors of a certain norm, and produces an equal number of lattice vectors of slightly smaller norm, by taking sums and differences of kk of the input vectors. Iterating these ''sieving steps'' sufficiently many times produces a short lattice vector. The fastest attacks (both classical and quantum) are for k=2k=2, but taking larger kk reduces the amount of memory required for the attack. In this paper we improve the quantum time complexity of 3-tuple sieving from 20.3098d2^{0.3098 d} to 20.2846d2^{0.2846 d}, using a two-level amplitude amplification aided by a preprocessing step that associates the given lattice vectors with nearby ''center points'' to focus the search on the neighborhoods of these center points. Our algorithm uses 20.1887d2^{0.1887d} classical bits and QCRAM bits, and 2o(d)2^{o(d)} qubits. This is the fastest known quantum algorithm for SVP when total memory is limited to 20.1887d2^{0.1887d}.

Cite

@article{arxiv.2510.08473,
  title  = {An Improved Quantum Algorithm for 3-Tuple Lattice Sieving},
  author = {Lynn Engelberts and Yanlin Chen and Amin Shiraz Gilani and Maya-Iggy van Hoof and Stacey Jeffery and Ronald de Wolf},
  journal= {arXiv preprint arXiv:2510.08473},
  year   = {2025}
}

Comments

Improved presentation and clarity of analysis