Hierarchy of discriminative power and complexity in learning quantum ensembles
Abstract
Distance metrics are central to machine learning, yet distances between ensembles of quantum states remain poorly understood due to fundamental quantum measurement constraints. We introduce a hierarchy of integral probability metrics, termed MMD-$k$, which generalizes the maximum mean discrepancy to quantum ensembles and exhibit a strict trade-off between discriminative power and statistical efficiency as the moment order $k$ increases. For pure-state ensembles of size $N$, estimating MMD-$k$ us...
Description / Details
Distance metrics are central to machine learning, yet distances between ensembles of quantum states remain poorly understood due to fundamental quantum measurement constraints. We introduce a hierarchy of integral probability metrics, termed MMD-, which generalizes the maximum mean discrepancy to quantum ensembles and exhibit a strict trade-off between discriminative power and statistical efficiency as the moment order increases. For pure-state ensembles of size , estimating MMD- using experimentally feasible SWAP-test-based estimators requires samples for constant , and samples to achieve full discriminative power at . In contrast, the quantum Wasserstein distance attains full discriminative power with samples. These results provide principled guidance for the design of loss functions in quantum machine learning, which we illustrate in the training quantum denoising diffusion probabilistic models.
Source: arXiv:2601.22005v1 - http://arxiv.org/abs/2601.22005v1 PDF: https://arxiv.org/pdf/2601.22005v1 Original Link: http://arxiv.org/abs/2601.22005v1
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Jan 29, 2026
Quantum Physics
Quantum Physics
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