Quantum Filtering and Analysis of Multiplicities in Eigenvalue Spectra

ORAL

Abstract

Fine-grained spectral properties of quantum Hamiltonians, including both eigenvalues and their multiplicities, provide useful information for characterizing many-body quantum systems as well as for understanding phenomena such as topological order. Extracting such information with small additive error is #BQP-complete in the worst case. In this work, we introduce QFAMES (Quantum Filtering and Analysis of Multiplicities in Eigenvalue Spectra), a quantum algorithm that efficiently identifies clusters of closely spaced dominant eigenvalues and determines their multiplicities under physically motivated assumptions, which allows us to bypass worst-case complexity barriers. QFAMES also enables the estimation of observable expectation values within targeted energy clusters, providing a powerful tool for studying quantum phase transitions and other physical properties. We validate the effectiveness of QFAMES through numerical demonstrations, including its applications to characterizing quantum phases in the transverse-field Ising model and estimating the ground-state degeneracy of a topologically ordered phase in the two-dimensional toric code model. Our approach offers rigorous theoretical guarantees and significant advantages over existing subspace-based quantum spectral analysis methods, particularly in terms of the sample complexity and the ability to resolve degeneracies.

*This work was supported in part by the U.S. Department of Energy, Office of Science, National Quantum Information Science Research Centers, Quantum Systems Accelerator (Z.D., L.L.), and by the U.S. Department of Energy, Office of Science, Accelerated Research in Quantum Computing Centers, Quantum Utility through Advanced Computational Quantum Algorithms, grant no. DE-SC0025572 (Y.Y, L.L.). L.L. is a Simons Investigator in Mathematics.

Publication: https://arxiv.org/abs/2510.07439

Presenters

  • Yilun Yang

    • University of California, Berkeley

Authors

  • Zhiyan Ding

    • University of Michigan
    • Department of Mathematics, University of Michigan, Ann Arbor
  • Lin Lin

    • University of California, Berkeley
  • Yilun Yang

    • University of California, Berkeley
  • Ruizhe Zhang

    • Purdue University
    • Department of Computer Science, Purdue University