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Natural quantum reservoir computing for temporal information processing

Yudai Suzuki, Qi Gao, Ken C. Pradel, Kenji Yasuoka, Naoki Yamamoto

2022Scientific Reports81 citationsDOIOpen Access PDF

Abstract

Reservoir computing is a temporal information processing system that exploits artificial or physical dissipative dynamics to learn a dynamical system and generate the target time-series. This paper proposes the use of real superconducting quantum computing devices as the reservoir, where the dissipative property is served by the natural noise added to the quantum bits. The performance of this natural quantum reservoir is demonstrated in a benchmark time-series regression problem and a practical problem classifying different objects based on temporal sensor data. In both cases the proposed reservoir computer shows a higher performance than a linear regression or classification model. The results indicate that a noisy quantum device potentially functions as a reservoir computer, and notably, the quantum noise, which is undesirable in the conventional quantum computation, can be used as a rich computation resource.

Topics & Concepts

Reservoir computingQuantum computerComputer scienceNatural computingComputationNoise (video)ExploitQuantumBenchmark (surveying)Dissipative systemProperty (philosophy)AlgorithmComputer engineeringTheoretical computer scienceArtificial intelligenceArtificial neural networkPhysicsRecurrent neural networkEpistemologyGeographyQuantum mechanicsImage (mathematics)Computer securityGeodesyPhilosophyNeural Networks and Reservoir ComputingAdvanced Memory and Neural ComputingNeural Networks and Applications