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W Maass

Showing results (1-10 of 17) with videos related to

Pageof 2
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Neural Computation|February 15, 1997
Fast sigmoidal networks via spiking neuronsW Maass
Network (Bristol, England)|December 23, 1998
A simple model for neural computation with firing rates and firing correlationsW Maass
Neural Computation|December 8, 2000
On the computational power of winner-take-allW Maass
Neural Computation|August 10, 2000
A model for fast analog computation based on unreliable synapsesW Maass, T Natschläger
Neural Computation|October 25, 2001
Computing the optimally fitted spike train for a synapseT Natschläger, W Maass
Rontgen-Blatter; Zeitschrift Fur Rontgen-Technik Und Medizinisch-Wissenschaftliche Photographie|March 1, 1974
[The radiological volume measurement of the heart with the aid of a television evaluating unit (author's transl)]O Schott, W Maass
Neural Computation|March 23, 1999
Analog neural nets with gaussian or other common noise distribution cannot recognize arbitrary regular languagesW Maass, E D Sontag
Neural Computation|August 23, 2000
Neural systems as nonlinear filtersW Maass, E D Sontag
Neural Computation|May 5, 1999
Dynamic stochastic synapses as computational unitsW Maass, A M Zador
Network (Bristol, England)|March 20, 2001
Efficient temporal processing with biologically realistic dynamic synapsesT Natschläger, W Maass, A Zador
Pageof 2

Showing results (1-10 of 17) with videos related to

Sort By:
Pageof 2
Neural Computation|February 15, 1997
Fast sigmoidal networks via spiking neuronsW Maass
Network (Bristol, England)|December 23, 1998
A simple model for neural computation with firing rates and firing correlationsW Maass
Neural Computation|December 8, 2000
On the computational power of winner-take-allW Maass
Neural Computation|August 10, 2000
A model for fast analog computation based on unreliable synapsesW Maass, T Natschläger
Neural Computation|October 25, 2001
Computing the optimally fitted spike train for a synapseT Natschläger, W Maass
Rontgen-Blatter; Zeitschrift Fur Rontgen-Technik Und Medizinisch-Wissenschaftliche Photographie|March 1, 1974
[The radiological volume measurement of the heart with the aid of a television evaluating unit (author's transl)]O Schott, W Maass
Neural Computation|March 23, 1999
Analog neural nets with gaussian or other common noise distribution cannot recognize arbitrary regular languagesW Maass, E D Sontag
Neural Computation|August 23, 2000
Neural systems as nonlinear filtersW Maass, E D Sontag
Neural Computation|May 5, 1999
Dynamic stochastic synapses as computational unitsW Maass, A M Zador
Network (Bristol, England)|March 20, 2001
Efficient temporal processing with biologically realistic dynamic synapsesT Natschläger, W Maass, A Zador
Pageof 2