Results 261 to 270 of about 19,366 (302)
Harnessing spatiotemporal transformation in magnetic domains for nonvolatile physical reservoir computing. [PDF]
Zhou J +6 more
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Reservoir Computing Enabled by Polymer Electrolyte-Gated MoS<sub>2</sub> Transistors for Time-Series Processing. [PDF]
Wan X +5 more
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Author Correction: Emerging opportunities and challenges for the future of reservoir computing. [PDF]
Yan M +5 more
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Multicellular Reservoir Computing
2022AbstractThe capacity of cells to process information is currently used to design cell-based tools for ecological, industrial, and biomedical applications such as detecting dangerous chemicals or for bioremediation. In most applications, individual cells are used as the information processing unit.
Vladimir Nikolić +3 more
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Multifunctional reservoir computing
Physical Review EWhereas the power of reservoir computing (RC) in inferring chaotic systems has been well established in the literature, the studies are mostly restricted to monofunctional machines where the training and testing data are acquired from the same attractor.
Yao Du +5 more
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2021
This chapter surveys the recent advancements on the extension of Reservoir Computing toward deep architectures, which is gaining increasing research attention in the neural networks community. Within this context, we focus on describing the major features of Deep Echo State Networks based on the hierarchical composition of multiple reservoirs.
Gallicchio C., Micheli A.
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This chapter surveys the recent advancements on the extension of Reservoir Computing toward deep architectures, which is gaining increasing research attention in the neural networks community. Within this context, we focus on describing the major features of Deep Echo State Networks based on the hierarchical composition of multiple reservoirs.
Gallicchio C., Micheli A.
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KI - Künstliche Intelligenz, 2012
Reservoir Computing (RC) is a paradigm of understanding and training Recurrent Neural Networks (RNNs) based on treating the recurrent part (the reservoir) differently than the readouts from it. It started ten years ago and is currently a prolific research area, giving important insights into RNNs, practical machine learning tools, as well as enabling ...
Mantas Lukoševičius +2 more
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Reservoir Computing (RC) is a paradigm of understanding and training Recurrent Neural Networks (RNNs) based on treating the recurrent part (the reservoir) differently than the readouts from it. It started ten years ago and is currently a prolific research area, giving important insights into RNNs, practical machine learning tools, as well as enabling ...
Mantas Lukoševičius +2 more
openaire +1 more source
Consistency Hierarchy of Reservoir Computers
IEEE Transactions on Neural Networks and Learning Systems, 2022We study the propagation and distribution of information-carrying signals injected in dynamical systems serving as reservoir computers. Through different combinations of repeated input signals, a multivariate correlation analysis reveals measures known as the consistency spectrum and consistency capacity.
Thomas Jungling +2 more
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2008 Second UKSIM European Symposium on Computer Modeling and Simulation, 2008
In trying to mimic biological functions of the brain, artificial neural network (ANN) research has, out of computational necessity, made a number of assumptions. Firstly, it is assumed that the complexity of biological processes can be usefully replicated artificially by abstracting a relatively few key or essential characteristics from the biological ...
David Reid, Mark Barrett-Baxendale
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In trying to mimic biological functions of the brain, artificial neural network (ANN) research has, out of computational necessity, made a number of assumptions. Firstly, it is assumed that the complexity of biological processes can be usefully replicated artificially by abstracting a relatively few key or essential characteristics from the biological ...
David Reid, Mark Barrett-Baxendale
openaire +1 more source

