QUANT-PHITMLJun 7, 2021

Encoding-dependent generalization bounds for parametrized quantum circuits

arXiv:2106.03880v3131 citations
Originality Incremental advance
AI Analysis

This work addresses the problem of theoretical guarantees for quantum machine learning models, providing incremental improvements by incorporating data-encoding dependencies into generalization bounds.

The authors derived generalization bounds for parametrized quantum circuit (PQC) models that explicitly depend on data-encoding strategies, enabling performance guarantees on unseen data and optimal strategy selection via structural risk minimization.

A large body of recent work has begun to explore the potential of parametrized quantum circuits (PQCs) as machine learning models, within the framework of hybrid quantum-classical optimization. In particular, theoretical guarantees on the out-of-sample performance of such models, in terms of generalization bounds, have emerged. However, none of these generalization bounds depend explicitly on how the classical input data is encoded into the PQC. We derive generalization bounds for PQC-based models that depend explicitly on the strategy used for data-encoding. These imply bounds on the performance of trained PQC-based models on unseen data. Moreover, our results facilitate the selection of optimal data-encoding strategies via structural risk minimization, a mathematically rigorous framework for model selection. We obtain our generalization bounds by bounding the complexity of PQC-based models as measured by the Rademacher complexity and the metric entropy, two complexity measures from statistical learning theory. To achieve this, we rely on a representation of PQC-based models via trigonometric functions. Our generalization bounds emphasize the importance of well-considered data-encoding strategies for PQC-based models.

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