QUANT-PHLGSTDec 22, 2024

A Parameter-Efficient Quantum Anomaly Detection Method on a Superconducting Quantum Processor

arXiv:2412.16867v43 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses the challenge of applying quantum machine learning to real-world tasks like image anomaly detection, showing incremental progress in efficiency and hardware implementation.

The authors tackled the problem of practical image anomaly detection by proposing a parameter-efficient quantum method, achieving over 90% accuracy in emulation and over 80% on a quantum processor with only 16 parameters.

Quantum machine learning has gained attention for its potential to address computational challenges. However, whether those algorithms can effectively solve practical problems and outperform their classical counterparts, especially on current quantum hardware, remains a critical question. In this work, we propose a novel quantum machine learning method, called Parameter-Efficient Quantum Anomaly Detection (PEQAD), for practical image anomaly detection, which aims to achieve both parameter efficiency and superior accuracy compared to classical models. Emulation results indicate that PEQAD demonstrates favourable recognition capabilities compared to classical baselines, achieving an average accuracy of over 90% on benchmarks with significantly fewer trainable parameters. Theoretical analysis confirms that PEQAD has a comparable expressivity to classical counterparts while requiring only a fraction of the parameters. Furthermore, we demonstrate the first implementation of a quantum anomaly detection method for general image datasets on a superconducting quantum processor. Specifically, we achieve an accuracy of over 80% with only 16 parameters on the device, providing initial evidence of PEQAD's practical viability in the noisy intermediate-scale quantum era and highlighting its significant reduction in parameter requirements.

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