Generalization of Quantum Machine Learning Models Using Quantum Fisher Information Metric

Author:

Haug Tobias12ORCID,Kim M. S.2

Affiliation:

1. Technology Innovation Institute

2. Imperial College London

Abstract

Generalization is the ability of machine learning models to make accurate predictions on new data by learning from training data. However, understanding generalization of quantum machine learning models has been a major challenge. Here, we introduce the data quantum Fisher information metric (DQFIM). It describes the capacity of variational quantum algorithms depending on variational ansatz, training data, and their symmetries. We apply the DQFIM to quantify circuit parameters and training data needed to successfully train and generalize. Using the dynamical Lie algebra, we explain how to generalize using a low number of training states. Counterintuitively, breaking symmetries of the training data can help to improve generalization. Finally, we find that out-of-distribution generalization, where training and testing data are drawn from different data distributions, can be better than using the same distribution. Our work provides a useful framework to explore the power of quantum machine learning models. Published by the American Physical Society 2024

Funder

UK Research and Innovation

Engineering and Physical Sciences Research Council

Samsung GRC project

Publisher

American Physical Society (APS)

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