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Quantum classifier with tailored quantum kernel

Quantum Physics 2020-03-25 v2

Abstract

Kernel methods have a wide spectrum of applications in machine learning. Recently, a link between quantum computing and kernel theory has been formally established, opening up opportunities for quantum techniques to enhance various existing machine learning methods. We present a distance-based quantum classifier whose kernel is based on the quantum state fidelity between training and test data. The quantum kernel can be tailored systematically with a quantum circuit to raise the kernel to an arbitrary power and to assign arbitrary weights to each training data. Given a specific input state, our protocol calculates the weighted power sum of fidelities of quantum data in quantum parallel via a swap-test circuit followed by two single-qubit measurements, requiring only a constant number of repetitions regardless of the number of data. We also show that our classifier is equivalent to measuring the expectation value of a Helstrom operator, from which the well-known optimal quantum state discrimination can be derived. We demonstrate the proof-of-principle via classical simulations with a realistic noise model and experiments using the IBM quantum computer.

Keywords

Cite

@article{arxiv.1909.02611,
  title  = {Quantum classifier with tailored quantum kernel},
  author = {Carsten Blank and Daniel K. Park and June-Koo Kevin Rhee and Francesco Petruccione},
  journal= {arXiv preprint arXiv:1909.02611},
  year   = {2020}
}

Comments

9 pages, 6 figures, supplemental information