Multiclass classification using quantum convolutional neural networks with hybrid quantum-classical learning
TL;DR: A quantum machine learning approach based on quantum convolutional neural networks for solvingMulticlass classification, a common task in computer vision, where one needs to categorize an image into three or more classes is proposed.
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Abstract: Multiclass classification is of great interest for various applications, for example, it is a common task in computer vision, where one needs to categorize an image into three or more classes. Here we propose a quantum machine learning approach based on quantum convolutional neural networks for solving the multiclass classification problem. The corresponding learning procedure is implemented via TensorFlowQuantum as a hybrid quantum-classical (variational) model, where quantum output results are fed to the softmax activation function with the subsequent minimization of the cross entropy loss via optimizing the parameters of the quantum circuit. Our conceptional improvements here include a new model for a quantum perceptron and an optimized structure of the quantum circuit. We use the proposed approach to solve a 4-class classification problem for the case of the MNIST dataset using eight qubits for data encoding and four ancilla qubits; previous results have been obtained for 3-class classification problems. Our results show that accuracies of our solution are similar to classical convolutional neural networks with comparable numbers of trainable parameters. We expect that our finding provide a new step towards the use of quantum neural networks for solving relevant problems in the NISQ era and beyond.
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Citations
Quantum machine learning for image classification
Arsenii Senokosov,Alexander Sedykh,A. B. Sagingalieva,Basil Kyriacou,Alexey A. Melnikov +4 more
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TL;DR: Two Quantum Machine Learning models that leverage the principles of quantum mechanics for effective computations are introduced, enabling the execution of computations even in the Noisy Intermediate-Scale Quantum era, where circuits with a large number of qubits are currently infeasible.
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Quantum machine learning for image classification
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