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Research PaperResearchia:202606.11079

Quantum Occam Learning: Sample-Supported Expressibility for Circuit-Based Quantum Learning

Jeongho Bang

Abstract

A central principle in quantum machine learning is that an ansatz should be expressive enough to represent the quantum data of interest. Yet, the expressibility is statistically meaningful only insofar as it can be learned from finitely many copies of an unknown quantum state. In this work, we develop an information-theoretic Occam theory for quantum data generated by finite-size quantum circuits. For the class $S_{n,G}$ of $n$-qubit pure states preparable with at most $G$ two-qubit gates, a met...

Submitted: June 11, 2026Subjects: Quantum Physics; Quantum Computing

Description / Details

A central principle in quantum machine learning is that an ansatz should be expressive enough to represent the quantum data of interest. Yet, the expressibility is statistically meaningful only insofar as it can be learned from finitely many copies of an unknown quantum state. In this work, we develop an information-theoretic Occam theory for quantum data generated by finite-size quantum circuits. For the class Sn,GS_{n,G} of nn-qubit pure states preparable with at most GG two-qubit gates, a metric-entropy argument gives the realizable sample law Θ~(G/ε2)\widetildeΘ(G/ε^2) in the circuit-limited regime. For an arbitrary source ρ^\hatρ, we introduce the best GG-gate approximation error dG(ρ^)d_G(\hatρ) and the approximate circuit complexity Cη(ρ^)C_η(\hatρ). We prove an agnostic quantum Occam theorem: with MM copies, one can learn up to the best GG-gate approximation error plus a statistical penalty O~(G/M)\widetilde{O}(\sqrt{G/M}). We then remove the need to know GG in advance through an adaptive model-selection theorem whose oracle inequality selects the circuit complexity justified by the data. Matching lower bounds yield a sample-supported expressibility law: at trace-distance accuracy εε, MM samples can support only GsupportedMε2G_{\rm supported} \simeq Mε^2 gates, up to logarithmic factors and tomography saturation at 2n2^n. Thus, the circuit complexity becomes an adaptive statistical resource rather than a static promise. Our framework turns bounded circuit complexity into a model-selection principle for quantum machine learning.


Source: arXiv:2606.12211v1 - http://arxiv.org/abs/2606.12211v1 PDF: https://arxiv.org/pdf/2606.12211v1 Original Link: http://arxiv.org/abs/2606.12211v1

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Date:
Jun 11, 2026
Topic:
Quantum Computing
Area:
Quantum Physics
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