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  4. Optimizing hyperparameters using the geometric difference
 
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2023
Poster
Title

Optimizing hyperparameters using the geometric difference

Title Supplement
Poster presented at the European Quantum Technologies Conference 2023
Abstract
Quantum kernel methods (QKM) are a promising method in Quantum machine learning (QML) thanks to the guarantees connected to them. Their accessibility for analytic considerations also opens up the possibility of prescreening datasets based on their potential for a quantum advantage. To do so, earlier works developed the geometric difference, which can be understood as a closeness measure between two kernel-based ML approaches, most importantly between a quantum kernel and classical kernel. This metric links the quantum and classical model complexities. Therefore, it raises the question of whether the geometric difference, based on its relation to model complexity, can be a useful tool in evaluations other than the potential for quantum advantage.
Author(s)
Egginger, Sebastian
Fraunhofer-Institut für Kognitive Systeme IKS  
Sakhnenko, Alona
Fraunhofer-Institut für Kognitive Systeme IKS  
Runge, Xiomara
Fraunhofer-Institut für Kognitive Systeme IKS  
Lorenz, Jeanette Miriam  orcid-logo
Fraunhofer-Institut für Kognitive Systeme IKS  
Conference
European Quantum Technologies Conference 2023  
DOI
10.24406/publica-2073
File(s)
Download (450.49 KB)
Rights
Under Copyright
Language
English
Fraunhofer-Institut für Kognitive Systeme IKS  
Fraunhofer Group
Fraunhofer-Verbund IUK-Technologie  
Keyword(s)
  • quantum machine learning

  • QML

  • quantum kernel method

  • QKM

  • geometric difference

  • hyperparameter optimization

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