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Bonn 2025 – wissenschaftliches Programm

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QI: Fachverband Quanteninformation

QI 2: Quantum Machine Learning I

QI 2.4: Vortrag

Montag, 10. März 2025, 11:45–12:00, HS VIII

Generating reservoir state descriptions with random matrices — •Tobias Fellner1, Samuel Tovey1, Christian Holm1, and Michael Spannowsky21Institute for Computational Physics, University of Stuttgart — 2Institute of Particle Physics Phenomenology, University of Durham

We demonstrate a novel approach to reservoir computation measurements using random matrices. We do so to motivate how atomic-scale devices could be used for real-world computational applications. Our approach uses random matrices to construct reservoir measurements, introducing a simple, scalable means of generating state descriptions. In our studies, two reservoirs, a five-atom Heisenberg spin chain and a five-qubit quantum circuit, perform time series prediction and data interpolation. The performance of the measurement technique and current limitations are discussed in detail, along with an exploration of the diversity of measurements provided by the random matrices. In addition, we explore the role of reservoir parameters such as coupling strength and measurement dimension, providing insight into how these learning machines could be automatically tuned for different problems. This research highlights the use of random matrices to measure simple quantum reservoirs for natural learning devices, and outlines a path forward for improving their performance and experimental realization.

Keywords: quantum reservoir computing; quantum measurements; quantum state descriptions; time series prediction

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