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Biological Cybernetics
|
July 28, 2011
An introductory review of information theory in the context of computational neuroscience
Mark D McDonnell, Shiro Ikeda, Jonathan H Manton
Scientific Reports
|
November 27, 2021
Combining machine learning and conventional statistical approaches for risk factor discovery in a large cohort study
Iqbal Madakkatel, Ang Zhou, Mark D McDonnell, et al.
Frontiers in Computational Neuroscience
|
March 29, 2011
Methods for generating complex networks with selected structural properties for simulations: a review and tutorial for neuroscientists
Brenton J Prettejohn, Matthew J Berryman, Mark D McDonnell
Neural Computation
|
November 8, 2014
Dynamics of gamma bursts in local field potentials
Priscilla E Greenwood, Mark D McDonnell, Lawrence M Ward
Proceedings of the IEEE. Institute of Electrical and Electronics Engineers
|
November 25, 2014
Engineering Intelligent Electronic Systems Based on Computational Neuroscience
Mark D McDonnell, Kwabena Boahen, Auke Ijspeert, et al.
Brain Research
|
October 18, 2011
Input-rate modulation of γ oscillations is sensitive to network topology, delays and short-term plasticity
Mark D McDonnell, Ashutosh Mohan, Christian Stricker, et al.
Computers in Biology and Medicine
|
May 18, 2021
The quest for better clinical word vectors: Ontology based and lexical vector augmentation versus clinical contextual embeddings
Namrata Nath, Sang-Heon Lee, Mark D McDonnell, et al.
Royal Society Open Science
|
October 10, 2017
Adaptive recursive algorithm for optimal weighted suprathreshold stochastic resonance
Liyan Xu, Fabing Duan, Xiao Gao, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics
|
September 17, 2013
Optimal sensor selection for noisy binary detection in stochastic pooling networks
Mark D McDonnell, Feng Li, P-O Amblard, et al.
Physical Review Letters
|
November 13, 2009
Neural population coding is optimized by discrete tuning curves
Alexander P Nikitin, Nigel G Stocks, Robert P Morse, et al.
Page
of 5
Search research articles
Search
Showing results (21-30 of 42) with videos related to
Sort By:
Page
of 5
Biological Cybernetics
|
July 28, 2011
An introductory review of information theory in the context of computational neuroscience
Mark D McDonnell, Shiro Ikeda, Jonathan H Manton
Scientific Reports
|
November 27, 2021
Combining machine learning and conventional statistical approaches for risk factor discovery in a large cohort study
Iqbal Madakkatel, Ang Zhou, Mark D McDonnell, et al.
Frontiers in Computational Neuroscience
|
March 29, 2011
Methods for generating complex networks with selected structural properties for simulations: a review and tutorial for neuroscientists
Brenton J Prettejohn, Matthew J Berryman, Mark D McDonnell
Neural Computation
|
November 8, 2014
Dynamics of gamma bursts in local field potentials
Priscilla E Greenwood, Mark D McDonnell, Lawrence M Ward
Proceedings of the IEEE. Institute of Electrical and Electronics Engineers
|
November 25, 2014
Engineering Intelligent Electronic Systems Based on Computational Neuroscience
Mark D McDonnell, Kwabena Boahen, Auke Ijspeert, et al.
Brain Research
|
October 18, 2011
Input-rate modulation of γ oscillations is sensitive to network topology, delays and short-term plasticity
Mark D McDonnell, Ashutosh Mohan, Christian Stricker, et al.
Computers in Biology and Medicine
|
May 18, 2021
The quest for better clinical word vectors: Ontology based and lexical vector augmentation versus clinical contextual embeddings
Namrata Nath, Sang-Heon Lee, Mark D McDonnell, et al.
Royal Society Open Science
|
October 10, 2017
Adaptive recursive algorithm for optimal weighted suprathreshold stochastic resonance
Liyan Xu, Fabing Duan, Xiao Gao, et al.
Physical Review. E, Statistical, Nonlinear, and Soft Matter Physics
|
September 17, 2013
Optimal sensor selection for noisy binary detection in stochastic pooling networks
Mark D McDonnell, Feng Li, P-O Amblard, et al.
Physical Review Letters
|
November 13, 2009
Neural population coding is optimized by discrete tuning curves
Alexander P Nikitin, Nigel G Stocks, Robert P Morse, et al.
Page
of 5