Generating quantum feature maps for SVM classifier
- URL: http://arxiv.org/abs/2207.11449v3
- Date: Sun, 25 Sep 2022 11:55:09 GMT
- Title: Generating quantum feature maps for SVM classifier
- Authors: Bang-Shien Chen and Jann-Long Chern
- Abstract summary: We present and compare two methods of generating quantum feature maps for quantum-enhanced support vector machine.
The first method is a genetic algorithm with multi-objective fitness function using penalty method, which incorporates maximizing the accuracy of classification.
The second method uses variational quantum circuit, focusing on how to contruct the ansatz based on unitary matrix decomposition.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: We present and compare two methods of generating quantum feature maps for
quantum-enhanced support vector machine, a classifier based on kernel method,
by which we can access high dimensional Hilbert space efficiently. The first
method is a genetic algorithm with multi-objective fitness function using
penalty method, which incorporates maximizing the accuracy of classification
and minimizing the gate cost of quantum feature map circuit. The second method
uses variational quantum circuit, focusing on how to contruct the ansatz based
on unitary matrix decomposition. Numerical results and comparisons are
presented to demonstrate how the fitness fuction reduces gate cost while
remaining high accuracy and conducting circuit through unitary matrix obtains
even better performance. In particular, we propose some thoughts on reducing
and optimizing the gate cost of a circuit while remaining perfect accuracy.
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