Learnability of general Pauli-sparse and nearly Pauli-sparse unitaries

Determine whether there exist general, query-efficient algorithms for learning n-qubit unitaries that are s-sparse in the Pauli basis, and more broadly nearly (s, ε)-sparse (i.e., the Pauli spectrum is concentrated on at most s components with at most ε residual ℓ1-mass), from black-box forward queries to the unitary, together with precise sample complexity bounds.

Background

The paper surveys prior results showing that certain structured subclasses of Pauli-sparse unitaries—such as quantum k-juntas (a special case of 4k-sparse unitaries) and unitaries supported on Pauli subgroups of size 2k—are learnable with sample complexity scaling as O(4k/ε) and Θ(2k/ε), respectively.

In contrast, before this work, the efficient learnability of general Pauli-sparse and nearly Pauli-sparse unitaries had not been established. The authors highlight this gap as a motivating open question and then propose algorithms addressing aspects of the problem under their learning framework.

References

Learning general sparse (and more broadly nearly sparse) unitaries remains an open question.

Query Learning Nearly Pauli Sparse Unitaries in Diamond Distance  (2604.00203 - Honjani et al., 31 Mar 2026) in Section 1 (Introduction)