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Quantum computer formulation of the FKP-operator eigenvalue problem for probabilistic learning on manifolds

Quantum Physics 2025-02-21 v1 Statistics Theory Statistics Theory

Abstract

We present a quantum computing formulation to address a challenging problem in the development of probabilistic learning on manifolds (PLoM). It involves solving the spectral problem of the high-dimensional Fokker-Planck (FKP) operator, which remains beyond the reach of classical computing. Our ultimate goal is to develop an efficient approach for practical computations on quantum computers. For now, we focus on an adapted formulation tailored to quantum computing. The methodological aspects covered in this work include the construction of the FKP equation, where the invariant probability measure is derived from a training dataset, and the formulation of the eigenvalue problem for the FKP operator. The eigen equation is transformed into a Schr\"odinger equation with a potential V, a non-algebraic function that is neither simple nor a polynomial representation. To address this, we propose a methodology for constructing a multivariate polynomial approximation of V, leveraging polynomial chaos expansion within the Gaussian Sobolev space. This approach preserves the algebraic properties of the potential and adapts it for quantum algorithms. The quantum computing formulation employs a finite basis representation, incorporating second quantization with creation and annihilation operators. Explicit formulas for the Laplacian and potential are derived and mapped onto qubits using Pauli matrix expressions. Additionally, we outline the design of quantum circuits and the implementation of measurements to construct and observe specific quantum states. Information is extracted through quantum measurements, with eigenstates constructed and overlap measurements evaluated using universal quantum gates.

Keywords

Cite

@article{arxiv.2502.14580,
  title  = {Quantum computer formulation of the FKP-operator eigenvalue problem for probabilistic learning on manifolds},
  author = {Christian Soize and Loïc Joubert-Doriol and Artur F. Izmaylov},
  journal= {arXiv preprint arXiv:2502.14580},
  year   = {2025}
}

Comments

27 pages, 6 Figures

R2 v1 2026-06-28T21:51:23.352Z