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Quartic quantum speedups for planted inference

27 June 2024
Alexander Schmidhuber
Ryan O'Donnell
Robin Kothari
Ryan Babbush
ArXiv (abs)PDFHTML
Main:41 Pages
Bibliography:3 Pages
Abstract

We describe a quantum algorithm for the Planted Noisy kkkXOR problem (also known as sparse Learning Parity with Noise) that achieves a nearly quartic (444th power) speedup over the best known classical algorithm while also only using logarithmically many qubits. Our work generalizes and simplifies prior work of Hastings, by building on his quantum algorithm for the Tensor Principal Component Analysis (PCA) problem. We achieve our quantum speedup using a general framework based on the Kikuchi Method (recovering the quartic speedup for Tensor PCA), and we anticipate it will yield similar speedups for further planted inference problems. These speedups rely on the fact that planted inference problems naturally instantiate the Guided Sparse Hamiltonian problem. Since the Planted Noisy kkkXOR problem has been used as a component of certain cryptographic constructions, our work suggests that some of these are susceptible to super-quadratic quantum attacks.

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@article{schmidhuber2025_2406.19378,
  title={ Quartic quantum speedups for planted inference },
  author={ Alexander Schmidhuber and Ryan O'Donnell and Robin Kothari and Ryan Babbush },
  journal={arXiv preprint arXiv:2406.19378},
  year={ 2025 }
}
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