Neural Networks for Programming Quantum Annealers
Samuel Bosch, Bobak Kiani, Rui Yang, Adrian Lupascu, and Seth Lloyd

TL;DR
This paper investigates whether integrating a small quantum annealer with a classical neural network enhances classification performance, finding that it does not provide significant benefits over classical methods alone.
Contribution
It explores the potential of combining classical neural networks with quantum annealers for classification, demonstrating limited advantages in simulated experiments.
Findings
Adding a quantum annealer does not significantly improve classification accuracy.
Classical neural networks alone are sufficient for the tested datasets.
Quantum annealers may not provide expected benefits in hybrid neural network setups.
Abstract
Quantum machine learning has the potential to enable advances in artificial intelligence, such as solving problems intractable on classical computers. Some fundamental ideas behind quantum machine learning are similar to kernel methods in classical machine learning. Both process information by mapping it into high-dimensional vector spaces without explicitly calculating their numerical values. We explore a setup for performing classification on labeled classical datasets, consisting of a classical neural network connected to a quantum annealer. The neural network programs the quantum annealer's controls and thereby maps the annealer's initial states into new states in the Hilbert space. The neural network's parameters are optimized to maximize the distance of states corresponding to inputs from different classes and minimize the distance between quantum states corresponding to the same…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Neural Networks and Applications · Quantum Information and Cryptography
