2024
DOI: 10.1007/s42484-024-00177-w
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Hybrid genetic optimization for quantum feature map design

Rowan Pellow-Jarman,
Anban Pillay,
Ilya Sinayskiy
et al.

Abstract: Kernel methods are an import class of techniques in machine learning. To be effective, good feature maps are crucial for mapping non-linearly separable input data into a higher dimensional (feature) space, thus allowing the data to be linearly separable in feature space. Previous work has shown that quantum feature map design can be automated for a given dataset using NSGA-II, a genetic algorithm, while both minimizing circuit size and maximizing classification accuracy. However, the evaluation of the accuracy… Show more

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