Unsupervised Feature Extraction and Reconstruction Using Parameterized Quantum Circuits
Li-An Lo, Li-Yi Hsu, En-Jui Kuo

TL;DR
This paper evaluates the quantum autoencoder's ability for unsupervised feature extraction and classification, demonstrating high accuracy on MNIST with a QCNN encoder but noting limitations in reconstruction quality.
Contribution
It systematically investigates QAE's performance on basic classification tasks and explores various architectures, highlighting its potential and current limitations.
Findings
QAE achieves 97.59% accuracy on MNIST binary classification.
QCNN-based encoder enhances feature extraction performance.
Reconstruction capabilities of QAE are limited, requiring further improvements.
Abstract
Autoencoders are fundamental tools in classical computing for unsupervised feature extraction, dimensionality reduction, and generative learning. The Quantum Autoencoder (QAE), introduced by Romero J.[2017 Quantum Sci. Technol. 2 045001], extends this concept to quantum systems and has been primarily applied to tasks like anomaly detection. Despite its potential, QAE has not been extensively evaluated in basic classification tasks such as handwritten digit classification, which could provide deeper insights into its capabilities. In this work, we systematically investigate the performance of QAE in unsupervised feature extraction and reconstruction tasks. Using various encoder and decoder architectures, we explore QAE's ability to classify MNIST and analyze its reconstruction effectiveness. Notably, with a QCNN-based encoder, QAE achieves an average accuracy of 97.59% in binary…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Parallel Computing and Optimization Techniques
