Litcius/Paper detail

Speeding up quantum perceptron via shortcuts to adiabaticity

Yue Ban, Xi Chen, E. Torrontegui, E. Solano, J. Casanova

2021Scientific Reports18 citationsDOIOpen Access PDF

Abstract

The quantum perceptron is a fundamental building block for quantum machine learning. This is a multidisciplinary field that incorporates abilities of quantum computing, such as state superposition and entanglement, to classical machine learning schemes. Motivated by the techniques of shortcuts to adiabaticity, we propose a speed-up quantum perceptron where a control field on the perceptron is inversely engineered leading to a rapid nonlinear response with a sigmoid activation function. This results in faster overall perceptron performance compared to quasi-adiabatic protocols, as well as in enhanced robustness against imperfections in the controls.

Topics & Concepts

PerceptronSuperposition principleComputer scienceSigmoid functionQuantumRobustness (evolution)Multilayer perceptronArtificial intelligenceNonlinear systemQuantum computerQuantum superpositionAlgorithmArtificial neural networkField (mathematics)Block (permutation group theory)Quantum algorithmMachine learningQuantum stateQuantum phase estimation algorithmPhysicsPattern recognition (psychology)Quantum Computing Algorithms and ArchitectureQuantum Information and CryptographyNeural Networks and Reservoir Computing