Quantum Convolutional Neural Network: A Hybrid Quantum-Classical Approach for Iris Dataset Classification
This paper presents a hybrid quantum-classical machine learning model for classification tasks, integrating a 4-qubit quantum circuit with a classical neural network. The quantum circuit is designed to encode the features of the Iris dataset using angle embedding and entangling gates, thereby captur...
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Zusammenfassung: | This paper presents a hybrid quantum-classical machine learning model for
classification tasks, integrating a 4-qubit quantum circuit with a classical
neural network. The quantum circuit is designed to encode the features of the
Iris dataset using angle embedding and entangling gates, thereby capturing
complex feature relationships that are difficult for classical models alone.
The model, which we term a Quantum Convolutional Neural Network (QCNN), was
trained over 20 epochs, achieving a perfect 100% accuracy on the Iris dataset
test set on 16 epoch. Our results demonstrate the potential of quantum-enhanced
models in supervised learning tasks, particularly in efficiently encoding and
processing data using quantum resources. We detail the quantum circuit design,
parameterized gate selection, and the integration of the quantum layer with
classical neural network components. This work contributes to the growing body
of research on hybrid quantum-classical models and their applicability to
real-world datasets. |
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DOI: | 10.48550/arxiv.2410.16344 |