Semisupervised Anomaly Detection using Support Vector Regression with Quantum Kernel
Kilian Tscharke, Sebastian Issel, Pascal Debus

TL;DR
This paper proposes a novel semisupervised anomaly detection method using support vector regression with quantum kernels, demonstrating superior performance on multiple real-world datasets compared to classical and other quantum models.
Contribution
It introduces a quantum kernel-based SVR model for semisupervised anomaly detection, filling a research gap and outperforming existing quantum and classical baselines.
Findings
QSVR achieves highest mean AUC across datasets.
QSVR outperforms quantum autoencoder on most datasets.
Quantum kernel SVR surpasses RBF kernel SVR and classical autoencoders.
Abstract
Anomaly detection (AD) involves identifying observations or events that deviate in some way from the rest of the data. Machine learning techniques have shown success in automating this process by detecting hidden patterns and deviations in large-scale data. The potential of quantum computing for machine learning has been widely recognized, leading to extensive research efforts to develop suitable quantum machine learning (QML) algorithms. In particular, the search for QML algorithms for near-term NISQ devices is in full swing. However, NISQ devices pose additional challenges due to their limited qubit coherence times, low number of qubits, and high error rates. Kernel methods based on quantum kernel estimation have emerged as a promising approach to QML on NISQ devices, offering theoretical guarantees, versatility, and compatibility with NISQ constraints. Especially support vector…
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Taxonomy
TopicsQuantum Information and Cryptography · Quantum Computing Algorithms and Architecture · Neural Networks and Reservoir Computing
MethodsRadial Basis Function
