Pattern recognition with Quantum Support Vector Machine(QSVM) on near term quantum processors.
Abstract
Machine Learning is boosting up the advancement in the eld of Arti cial Intelligence
these days. However, almost every machine learning algorithm contains an
optimization problem to solve. Inspired by quantum mechanics, quantum computing
is quite a promising approach to solve high complexity optimization problems
signi cantly faster and more e cient than classical computers. In this paper, we
have worked on a very fundamental supervised learning problem. First, we discuss
an approach to map the classical feature points on a quantum computer. Then we
propose a Quantum Support Vector Machine(QSVM) model that runs on near term
superconducting quantum processors. We show that using quantum optimization
it is possible to train a discriminative SVM model that is capable of recognising
patterns.