Variational Quantum Circuit
Variational quantum circuits (VQCs) are hybrid quantum-classical algorithms aiming to leverage quantum computers for machine learning and optimization tasks by optimizing a parameterized quantum circuit to minimize a cost function. Current research focuses on improving VQC performance through enhanced optimization techniques (e.g., quantum natural gradient, metaheuristics, and adaptive pruning), efficient circuit design (including architecture search and data embedding strategies), and mitigating challenges like barren plateaus. These advancements are crucial for realizing the potential of near-term quantum computers in diverse applications, ranging from anomaly detection and reinforcement learning to solving complex scientific problems.
Papers
Quantum Denoising Diffusion Models
Michael Kölle, Gerhard Stenzel, Jonas Stein, Sebastian Zielinski, Björn Ommer, Claudia Linnhoff-Popien
Quantum Advantage Actor-Critic for Reinforcement Learning
Michael Kölle, Mohamad Hgog, Fabian Ritz, Philipp Altmann, Maximilian Zorn, Jonas Stein, Claudia Linnhoff-Popien
Disentangling Quantum and Classical Contributions in Hybrid Quantum Machine Learning Architectures
Michael Kölle, Jonas Maurer, Philipp Altmann, Leo Sünkel, Jonas Stein, Claudia Linnhoff-Popien
Multi-Agent Quantum Reinforcement Learning using Evolutionary Optimization
Michael Kölle, Felix Topp, Thomy Phan, Philipp Altmann, Jonas Nüßlein, Claudia Linnhoff-Popien