Hybrid Genetic Optimisation for Quantum Feature Map Design
Rowan Pellow-Jarman, Anban Pillay, Ilya Sinayskiy, Francesco, Petruccione

TL;DR
This paper introduces a hybrid genetic algorithm approach for designing quantum feature maps, replacing costly accuracy evaluations with faster kernel-target alignment measures, and further improves results with parameter training.
Contribution
It proposes using kernel-target alignment as a faster substitute for accuracy in quantum feature map design and combines it with parameter training for enhanced performance.
Findings
Kernel-target alignment accelerates quantum feature map evaluation.
Hybrid approach achieves accuracy comparable to previous methods.
Training circuit parameters further improves classification accuracy.
Abstract
Kernel methods are an important 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 achieved by a candidate feature map is costly. In this work, we demonstrate the suitability of kernel-target alignment as a substitute for accuracy in genetic algorithm-based quantum feature map design. Kernel-target alignment is faster to evaluate than accuracy and doesn't require some data points to be reserved for its evaluation. To further accelerate the evaluation of…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Evolutionary Algorithms and Applications · Metaheuristic Optimization Algorithms Research
