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Exploring quantumness in quantum reservoir computing

Niclas Götting, Frederik Lohof, Christopher Gies

2023Physical review. A/Physical review, A27 citationsDOI

Abstract

Quantum reservoir computing is an emerging field in machine learning with quantum systems. While classical reservoir computing has proven to be a capable concept for enabling machine learning on real, complex dynamical systems with many degrees of freedom, the advantage of its quantum analog has yet to be fully explored. Here, we establish a link between quantum properties of a quantum reservoir, namely, entanglement and its occupied phase-space dimension, and its linear short-term memory performance. We find that a high degree of entanglement in the reservoir is a prerequisite for a more complex reservoir dynamics, which is key to unlocking the exponential phase space and higher short-term memory capacity. We quantify these relations and discuss the effect of dephasing in the performance of physical quantum reservoirs.

Topics & Concepts

Reservoir computingQuantum entanglementComputer scienceQuantumDimension (graph theory)Quantum computerDephasingField (mathematics)Phase spaceTheoretical computer scienceStatistical physicsPhysicsQuantum mechanicsMathematicsArtificial intelligenceRecurrent neural networkArtificial neural networkPure mathematicsNeural Networks and Reservoir ComputingQuantum Information and CryptographyAdvanced Memory and Neural Computing
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