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Jun Namikawa

Showing results (1-10 of 6) with videos related to

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Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|October 4, 2005
Chaotic itinerancy and power-law residence time distribution in stochastic dynamical systemsJun Namikawa
Neural Networks : the Official Journal of the International Neural Network Society|October 22, 2008
A model for learning to segment temporal sequences, utilizing a mixture of RNN experts together with adaptive varianceJun Namikawa, Jun Tani
Neural Networks : the Official Journal of the International Neural Network Society|January 5, 2010
Learning to imitate stochastic time series in a compositional way by chaosJun Namikawa, Jun Tani
Plos Computational Biology|October 27, 2011
A neurodynamic account of spontaneous behaviourJun Namikawa, Ryunosuke Nishimoto, Jun Tani
IEEE Transactions on Systems, Man, and Cybernetics. Part B, Cybernetics : a Publication of the IEEE Systems, Man, and Cybernetics Society|February 14, 2008
Codevelopmental learning between human and humanoid robot using a dynamic neural-network modelJun Tani, Ryu Nishimoto, Jun Namikawa, et al.
Neuroscience Research|February 18, 2014
An artificial network model for estimating the network structure underlying partially observed neuronal signalsMisako Komatsu, Jun Namikawa, Zenas C Chao, et al.
Pageof 1

Showing results (1-10 of 6) with videos related to

Sort By:
Pageof 1
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics|October 4, 2005
Chaotic itinerancy and power-law residence time distribution in stochastic dynamical systemsJun Namikawa
Neural Networks : the Official Journal of the International Neural Network Society|October 22, 2008
A model for learning to segment temporal sequences, utilizing a mixture of RNN experts together with adaptive varianceJun Namikawa, Jun Tani
Neural Networks : the Official Journal of the International Neural Network Society|January 5, 2010
Learning to imitate stochastic time series in a compositional way by chaosJun Namikawa, Jun Tani
Plos Computational Biology|October 27, 2011
A neurodynamic account of spontaneous behaviourJun Namikawa, Ryunosuke Nishimoto, Jun Tani
IEEE Transactions on Systems, Man, and Cybernetics. Part B, Cybernetics : a Publication of the IEEE Systems, Man, and Cybernetics Society|February 14, 2008
Codevelopmental learning between human and humanoid robot using a dynamic neural-network modelJun Tani, Ryu Nishimoto, Jun Namikawa, et al.
Neuroscience Research|February 18, 2014
An artificial network model for estimating the network structure underlying partially observed neuronal signalsMisako Komatsu, Jun Namikawa, Zenas C Chao, et al.
Pageof 1