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Learning low-degree quantum objects

Quantum Physics 2024-05-20 v1 Computational Complexity Data Structures and Algorithms Machine Learning Functional Analysis

Abstract

We consider the problem of learning low-degree quantum objects up to ε\varepsilon-error in 2\ell_2-distance. We show the following results: (i)(i) unknown nn-qubit degree-dd (in the Pauli basis) quantum channels and unitaries can be learned using O(1/εd)O(1/\varepsilon^d) queries (independent of nn), (ii)(ii) polynomials p:{1,1}n[1,1]p:\{-1,1\}^n\rightarrow [-1,1] arising from dd-query quantum algorithms can be classically learned from O((1/ε)dlogn)O((1/\varepsilon)^d\cdot \log n) many random examples (x,p(x))(x,p(x)) (which implies learnability even for d=O(logn)d=O(\log n)), and (iii)(iii) degree-dd polynomials p:{1,1}n[1,1]p:\{-1,1\}^n\to [-1,1] can be learned through O(1/εd)O(1/\varepsilon^d) queries to a quantum unitary UpU_p that block-encodes pp. Our main technical contributions are new Bohnenblust-Hille inequalities for quantum channels and completely bounded~polynomials.

Cite

@article{arxiv.2405.10933,
  title  = {Learning low-degree quantum objects},
  author = {Srinivasan Arunachalam and Arkopal Dutt and Francisco Escudero Gutiérrez and Carlos Palazuelos},
  journal= {arXiv preprint arXiv:2405.10933},
  year   = {2024}
}

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26+4 pages