2025-12-02
An improved quantum algorithm for 3-tuple lattice sieving
Publication
Publication
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 $d$, they are significantly faster than non-heuristic approaches and their heuristic assumptions are verified by extensive experiments. $k$-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 $k$ 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 $k=2$, but taking larger $k$ reduces the amount of memory required for the attack. In this paper we improve the quantum time complexity of 3-tuple sieving from $2^{0.3098 d}$ to $2^{0.2846 d}$, 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 $2^{0.1887d}$ classical bits and QCRAM bits, and $2^{o(d)}$ qubits. This is the fastest known quantum algorithm for SVP when total memory is limited to $2^{0.1887d}$.
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| doi.org/10.48550/arXiv.2510.08473 | |
| Groeifonds - QDNL / KAT 1 | |
| creativecommons.org/licenses/by/4.0/ | |
| Organisation | Algorithms and Complexity |
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Engelberts, L., Chen, Y., Gilani, A. S., van Hoof, M.-I., Jeffery, S., & de Wolf, R. (2025). An improved quantum algorithm for 3-tuple lattice sieving. doi:10.48550/arXiv.2510.08473 |
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