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  4. Learning reduced representations for quantum classifiers
 
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2025
Journal Article
Title

Learning reduced representations for quantum classifiers

Abstract
Data sets that are specified by a large number of features are currently outside the area of applicability for quantum machine learning algorithms. An immediate solution to this impasse is the application of dimensionality reduction methods before passing the data to the quantum algorithm. We investigate six conventional feature extraction algorithms and five autoencoder-based dimensionality reduction models to a particle physics data set with 67 features. The reduced representations generated by these models are then used to train a quantum support vector machine for solving a binary classification problem: whether a Higgs boson is produced in proton collisions at the LHC. We show that the autoencoder methods learn a better lower-dimensional representation of the data, with the method we design, the Sinkclass autoencoder, performing 40% better than the baseline. The methods developed here open up the applicability of quantum machine learning to a larger array of data sets. Moreover, we provide a recipe for effective dimensionality reduction in this context.
Author(s)
Odagiu, Patrick
TH Zürich -ETH-  
Belis, Vasilis
TH Zürich -ETH-  
Schulze, Lennart
Columbia University, NY
Barkoutsos, Panagiotis
IBM Quantum
Grossi, Michele
CERN  
Reiter, Florentin
Fraunhofer-Institut für Angewandte Festkörperphysik IAF  
Dissertori, Günther
TH Zürich -ETH-  
Tavernelli, Ivano
IBM Quantum
Vallecorsa, Sofia
CERN  
Journal
Quantum machine intelligence  
Open Access
File(s)
Download (3.16 MB)
Rights
CC BY 4.0: Creative Commons Attribution
DOI
10.1007/s42484-025-00331-y
10.24406/publica-6888
Additional link
Full text
Language
English
Fraunhofer-Institut für Angewandte Festkörperphysik IAF  
Keyword(s)
  • Dimensionality reduction

  • Hybrid methods

  • Classification

  • Particle physics data

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