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Quantum Machine Learning

Space-Efficient and Noise-Robust Quantum Factoring

arXiv
Authors: Seyoon Ragavan, Vinod Vaikuntanathan

Year

2023

Paper ID

54239

Status

Preprint

Abstract Read

~2 min

Abstract Words

284

Citations

N/A

Abstract

We provide two improvements to Regev's recent quantum factoring algorithm (Journal of the ACM 2025), addressing its space efficiency and its noise-tolerance. Our first contribution is to improve the quantum space efficiency of Regev's algorithm while keeping the circuit size the same. Our main result constructs a quantum factoring circuit using O\(n log n\) qubits and O\(n3/2 log n\) gates. We achieve the best of Shor and Regev (upto a logarithmic factor in the space complexity): on the one hand, Regev's circuit requires O\(n3/2\) qubits and O\(n3/2 log n\) gates, while Shor's circuit requires O\(n2 log n\) gates but only O\(n log n\) qubits. As with Regev, to factor an n-bit integer N, we run our circuit independently O\(sqrt{n}\) times and apply Regev's classical postprocessing procedure. Our optimization is achieved by implementing efficient and reversible exponentiation with Fibonacci numbers in the exponent, rather than the usual powers of 2, adapting work by Kaliski (arXiv:1711.02491) from the classical reversible setting to the quantum setting. This technique also allows us to perform quantum modular exponentiation that is efficient in both space and size without requiring significant precomputation, a result that may be useful for other quantum algorithms. A key ingredient of our exponentiation implementation is an efficient circuit for a function resembling in-place quantum-quantum modular multiplication. Our second contribution is to show that Regev's classical postprocessing procedure can be modified to tolerate a constant fraction of the quantum circuit runs being corrupted by errors. In contrast, Regev's analysis of his classical postprocessing procedure requires all approx sqrt{n} runs to be successful. In a nutshell, we achieve this using lattice reduction techniques to detect and filter out corrupt samples.

Why This Paper Matters

  • This paper contributes to the Quantum Machine Learning research area in the Quantum Articles archive.
  • It adds a 2023 reference point for readers tracking recent quantum research.
  • We provide two improvements to Regev's recent quantum factoring algorithm (Journal of the ACM 2025), addressing its space efficiency and its noise-tolerance.

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