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  4. Pooling Techniques in Hybrid Quantum-Classical Convolutional Neural Networks
 
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2023
Conference Paper
Title

Pooling Techniques in Hybrid Quantum-Classical Convolutional Neural Networks

Abstract
Quantum machine learning has received significant interest in recent years, with theoretical studies showing that quantum variants of classical machine learning algorithms can provide good generalization from small training data sizes. However, there are notably no strong theoretical insights about what makes a quantum circuit design better than another, and comparative studies between quantum equivalents have not been done for every type of classical layers or techniques crucial for classical machine learning. Particularly, the pooling layer within convolutional neural networks is a fundamental operation left to explore. Pooling mechanisms significantly improve the performance of classical machine learning algorithms by playing a key role in reducing input dimensionality and extracting clean features from the input data. In this work, an in-depth study of pooling techniques in hybrid quantum-classical convolutional neural networks (QCCNNs) for classifying 2D medical images is performed. The performance of four different quantum and hybrid pooling techniques is studied: mid-circuit measurements, ancilla qubits with controlled gates, modular quantum pooling blocks and qubit selection with classical postprocessing. We find similar or better performance in comparison to an equivalent classical model and QCCNN without pooling and conclude that it is promising to study architectural choices in QCCNNs in more depth for future applications.
Author(s)
Monnet, Maureen
Fraunhofer-Institut für Kognitive Systeme IKS  
Gebran, Hanady
Fraunhofer-Institut für Kognitive Systeme IKS  
Matic-Flierl, Andrea
Fraunhofer-Institut für Kognitive Systeme IKS  
Kiwit, Florian
Schachtner, Balthasar
Ludwig-Maximilians-Universität München
Bentellis, Amine
Fraunhofer-Institut für Kognitive Systeme IKS  
Lorenz, Jeanette Miriam  orcid-logo
Fraunhofer-Institut für Kognitive Systeme IKS  
Mainwork
IEEE Quantum Week 2023. Proceedings. Vol.III: Second IEEE Quantum Science and Engineering Education Conference, QSEEC 2023  
Project(s)
BayQS
Funder
Bayerisches Staatsministerium für Wirtschaft, Landesentwicklung und Energie  
Conference
International Conference on Quantum Computing and Engineering 2023  
Quantum Week 2023  
Quantum Science and Engineering Education Conference 2023  
Open Access
DOI
10.1109/QCE57702.2023.00074
10.24406/publica-2282
File(s)
Monnet_PoolingTechniquesInHybridQuantumClassicalConvolutionalNeuralNetworks_2309_QCE_AuthorsVersion.pdf (2.22 MB)
Rights
Under Copyright
Language
English
Fraunhofer-Institut für Kognitive Systeme IKS  
Fraunhofer Group
Fraunhofer-Verbund IUK-Technologie  
Keyword(s)
  • quantum machine learning

  • quantum pooling layers

  • quantum convolutional neural networks

  • QCNN

  • medical imaging

  • medtech

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