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Quantum autoencoders via quantum adders with genetic algorithms

Lucas Lamata, Unai Alvarez-Rodriguez, José D. Martín‐Guerrero, Mikel Sanz, E. Solano

2020LA Referencia (Red Federada de Repositorios Institucionales de Publicaciones Científicas)65 citations

Abstract

The quantum autoencoder is a recent paradigm in the field of quantum machine learning, which may enable an enhanced use of resources in quantum technologies. To this end, quantum neural networks with less nodes in the inner than in the outer layers were considered. Here, we propose a useful connection between quantum autoencoders and quantum adders, which approximately add two unknown quantum states supported in different quantum systems. Specifically, this link allows us to employ optimized approximate quantum adders, obtained with genetic algorithms, for the implementation of quantum autoencoders for a variety of initial states. Furthermore, we can also directly optimize the quantum autoencoders via genetic algorithms. Our approach opens a different path for the design of quantum autoencoders in controllable quantum platforms. (c) 2018 IOP Publishing Ltd.

Topics & Concepts

QuantumAutoencoderQuantum computerComputer scienceQuantum algorithmAlgorithmQubitQuantum networkQuantum phase estimation algorithmAdderArtificial neural networkArtificial intelligencePhysicsQuantum mechanicsTelecommunicationsLatency (audio)Quantum Computing Algorithms and ArchitectureQuantum Information and CryptographyNeural Networks and Reservoir Computing