Quantum One-class Classification With a Distance-based Classifier
- URL: http://arxiv.org/abs/2007.16200v2
- Date: Thu, 6 May 2021 16:53:53 GMT
- Title: Quantum One-class Classification With a Distance-based Classifier
- Authors: Nicolas M. de Oliveira, Lucas P. de Albuquerque, Wilson R. de
Oliveira, Teresa B. Ludermir, and Adenilton J. da Silva
- Abstract summary: existing errors in the current quantum hardware and the low number of qubits available make it necessary to use solutions that use fewer qubits and fewer operations.
We present a new classifier based on named Quantum One-class Quantum computers (QOCC) that consists of a minimal quantum machine learning model with fewer operations and qubits.
- Score: 1.316309856358873
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The advancement of technology in Quantum Computing has brought possibilities
for the execution of algorithms in real quantum devices. However, the existing
errors in the current quantum hardware and the low number of available qubits
make it necessary to use solutions that use fewer qubits and fewer operations,
mitigating such obstacles. Hadamard Classifier (HC) is a distance-based quantum
machine learning model for pattern recognition. We present a new classifier
based on HC named Quantum One-class Classifier (QOCC) that consists of a
minimal quantum machine learning model with fewer operations and qubits, thus
being able to mitigate errors from NISQ (Noisy Intermediate-Scale Quantum)
computers. Experimental results were obtained by running the proposed
classifier on a quantum device and show that QOCC has advantages over HC.
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