Litcius/Paper detail

Compositional optimization of quantum circuits for quantum kernels of support vector machines

Elham Torabian, Roman V. Krems

2023Physical Review Research15 citationsDOIOpen Access PDF

Abstract

While quantum machine learning (ML) has been proposed to be one of the most promising applications of quantum computing, how to build quantum ML models that outperform classical ML remains a major open question. Here, we demonstrate a Bayesian algorithm for constructing quantum kernels for support vector machines that adapts quantum gate sequences to data. The algorithm increases the complexity of quantum circuits incrementally by appending quantum gates selected with Bayesian information criterion as circuit selection metric and Bayesian optimization of the parameters of the locally optimal quantum circuits identified. The performance of the resulting quantum models for the classification problems considered here significantly exceeds that of optimized classical models with conventional kernels.

Topics & Concepts

QuantumQuantum gateQuantum circuitQuantum algorithmComputer scienceQuantum computerElectronic circuitSupport vector machineAlgorithmMetric (unit)Bayesian optimizationMathematicsTheoretical computer scienceQuantum error correctionArtificial intelligencePhysicsQuantum mechanicsEngineeringOperations managementQuantum Computing Algorithms and ArchitectureQuantum Information and CryptographyMachine Learning in Materials Science