Quantum Machine Learning
Quantum machine learning (QML) aims to leverage the unique properties of quantum computers to enhance machine learning algorithms, primarily focusing on improving speed, accuracy, and data efficiency. Current research emphasizes the development and application of quantum algorithms like variational quantum circuits (VQCs), quantum kernels, and quantum neural networks (QNNs), including variations such as quantum LSTMs and GANs, often in hybrid quantum-classical architectures. This field is significant because it explores the potential for quantum speedups in various machine learning tasks, with applications ranging from image classification and drug discovery to materials science and anomaly detection, although the extent of practical quantum advantage remains an active area of investigation. Challenges include mitigating noise in quantum hardware and understanding the generalization capabilities of QML models.
Papers
Feature Importance and Explainability in Quantum Machine Learning
Luke Power, Krishnendu Guha
Prospects of Privacy Advantage in Quantum Machine Learning
Jamie Heredge, Niraj Kumar, Dylan Herman, Shouvanik Chakrabarti, Romina Yalovetzky, Shree Hari Sureshbabu, Changhao Li, Marco Pistoia
Universal replication of chaotic characteristics by classical and quantum machine learning
Sheng-Chen Bai, Shi-Ju Ran
A Comparative Analysis of Adversarial Robustness for Quantum and Classical Machine Learning Models
Maximilian Wendlinger, Kilian Tscharke, Pascal Debus
Guided-SPSA: Simultaneous Perturbation Stochastic Approximation assisted by the Parameter Shift Rule
Maniraman Periyasamy, Axel Plinge, Christopher Mutschler, Daniel D. Scherer, Wolfgang Mauerer