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Query Learning Nearly Pauli Sparse Unitaries in Diamond Distance

Zahra Honjani, Mohsen Heidari

Abstract

We study the problem of learning nearly $(s,ε)$-sparse unitaries, meaning that the Pauli spectrum is concentrated on at most $s$ components with at most $ε$ residual mass in Pauli $\ell_1$-norm. This class generalizes well-studied families, including sparse unitaries, quantum $k$-juntas, $2^k$-Pauli dimensional channels, and compositions of depth $O(\log\log n)$ circuits with near-Clifford circuits. Given query access to an unknown nearly sparse unitary $U$, our goal is to efficiently (both in time and query complexity) construct a quantum channel that is close in diamond distance to $U$. We design a learning algorithm achieving this guarantee using $\tilde{O}(s^6/ε^4)$ forward queries to $U$, and running time polynomial in relevant parameters. A key contribution is an efficient quantum algorithm that, given query access to an arbitrary unknown unitary $U$, estimates all Pauli coefficients (up to a shared global phase) whose magnitude exceeds a given threshold $θ$, extending existing sparse recovery techniques to general unitaries. We also study the broader class of unitaries with bounded Pauli $\ell_1$-norm. For that class, we prove an exponential query lower bound $Ω(2^{n/2})$. We introduce a more relaxed accuracy metric which is the diamond distance restricted to a set of input states. Then, we show that, under this metric, unitaries with Pauli $\ell_1$-norm uniformly bounded by $L_1$ are learnable with $\tilde{O}(L_1^8/ε^{16})$.

Query Learning Nearly Pauli Sparse Unitaries in Diamond Distance

Abstract

We study the problem of learning nearly -sparse unitaries, meaning that the Pauli spectrum is concentrated on at most components with at most residual mass in Pauli -norm. This class generalizes well-studied families, including sparse unitaries, quantum -juntas, -Pauli dimensional channels, and compositions of depth circuits with near-Clifford circuits. Given query access to an unknown nearly sparse unitary , our goal is to efficiently (both in time and query complexity) construct a quantum channel that is close in diamond distance to . We design a learning algorithm achieving this guarantee using forward queries to , and running time polynomial in relevant parameters. A key contribution is an efficient quantum algorithm that, given query access to an arbitrary unknown unitary , estimates all Pauli coefficients (up to a shared global phase) whose magnitude exceeds a given threshold , extending existing sparse recovery techniques to general unitaries. We also study the broader class of unitaries with bounded Pauli -norm. For that class, we prove an exponential query lower bound . We introduce a more relaxed accuracy metric which is the diamond distance restricted to a set of input states. Then, we show that, under this metric, unitaries with Pauli -norm uniformly bounded by are learnable with .

Paper Structure

This paper contains 35 sections, 23 theorems, 125 equations, 1 table.

Key Result

Lemma 1

Let $U$ and $V$ be arbitrary linear operators acting on $n$ qubits. Let $\mathcal{U}(\rho) = U\rho U^\dagger$ and $\mathcal{V}(\rho) = V\rho V^\dagger$. Then the diamond distance between the induced maps is bounded by: Moreover , $\blacktriangleleft$$\blacktriangleleft$

Theorems & Definitions (56)

  • Definition 1: Learning unitaries
  • Definition 2: Pauli sparsity
  • Definition 3: Nearly sparse unitaries
  • Definition 4: diamond distance
  • Definition 5: Phase-aligned operator distance
  • Lemma 1: Generalized Distance Bound
  • proof
  • Corollary 1
  • proof
  • Theorem 1: cf. Theorem 2 in Huang2020
  • ...and 46 more