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Quantum self-supervised learning

Ben Jaderberg, Lewis W. Anderson, Weiyin Xie, Samuel Albanie, Martin Kiffner, Dieter Jaksch

2022Quantum Science and Technology36 citationsDOIOpen Access PDF

Abstract

Abstract The resurgence of self-supervised learning, whereby a deep learning model generates its own supervisory signal from the data, promises a scalable way to tackle the dramatically increasing size of real-world data sets without human annotation. However, the staggering computational complexity of these methods is such that for state-of-the-art performance, classical hardware requirements represent a significant bottleneck to further progress. Here we take the first steps to understanding whether quantum neural networks (QNNs) could meet the demand for more powerful architectures and test its effectiveness in proof-of-principle hybrid experiments. Interestingly, we observe a numerical advantage for the learning of visual representations using small-scale QNN over equivalently structured classical networks, even when the quantum circuits are sampled with only 100 shots. Furthermore, we apply our best quantum model to classify unseen images on the ibmq_paris quantum computer and find that current noisy devices can already achieve equal accuracy to the equivalent classical model on downstream tasks.

Topics & Concepts

Computer scienceScalabilityBottleneckArtificial intelligenceQuantumArtificial neural networkScale (ratio)Deep learningMachine learningTheoretical computer scienceQuantum mechanicsPhysicsEmbedded systemDatabaseQuantum Computing Algorithms and ArchitectureNeural Networks and Reservoir ComputingQuantum Information and Cryptography
Quantum self-supervised learning | Litcius