about
What is stochastic resonance? Definitions, misconceptions, debates, and its relevance to biologySmall modifications to network topology can induce stochastic bistable spiking dynamics in a balanced cortical modelThe benefits of noise in neural systems: bridging theory and experimentModeling the influence of short term depression in vesicle release and stochastic calcium channel gating on auditory nerve spontaneous firing statistics.Engineering Intelligent Electronic Systems Based on Computational Neuroscience.A unified account of perceptual layering and surface appearance in terms of gamut relativity.Motif-role-fingerprints: the building-blocks of motifs, clustering-coefficients and transitivities in directed networksFast, Simple and Accurate Handwritten Digit Classification by Training Shallow Neural Network Classifiers with the 'Extreme Learning Machine' Algorithm.Interaction of short-term depression and firing dynamics in shaping single neuron encoding.Methods for generating complex networks with selected structural properties for simulations: a review and tutorial for neuroscientists.An introductory review of information theory in the context of computational neuroscience.A review of methods for identifying stochastic resonance in simulations of single neuron models.Modeling Electrode Place Discrimination in Cochlear Implant Stimulation.Track Everything: Limiting Prior Knowledge in Online Multi-Object Recognition.Information theoretic optimization of cochlear implant electrode usage probabilities.Ion channel noise can explain firing correlation in auditory nerves.Signal acquisition via polarization modulation in single photon sources.Editorial: Neuronal Stochastic Variability: Influences on Spiking Dynamics and Network Activity.Adaptive recursive algorithm for optimal weighted suprathreshold stochastic resonance.Phase changes in neuronal postsynaptic spiking due to short term plasticity.Identifying positive roles for endogenous stochastic noise during computation in neural systems.Input-rate modulation of γ oscillations is sensitive to network topology, delays and short-term plasticity.Optimal sensor selection for noisy binary detection in stochastic pooling networks.Channel-noise-induced stochastic facilitation in an auditory brainstem neuron model.Metabolic cost of neuronal information in an empirical stimulus-response model.Dynamics of gamma bursts in local field potentials.Stochastic information transfer from cochlear implant electrodes to auditory nerve fibers.Too good to be true: when overwhelming evidence fails to convince.Maximally informative stimuli and tuning curves for sigmoidal rate-coding neurons and populationsInformation capacity of stochastic pooling networks is achieved by discrete inputsNeural population coding is optimized by discrete tuning curvesSimulation of electromyographic recordings following transcranial magnetic stimulation
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researcher ORCID ID = 0000-0002-7009-3869
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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Mark D McDonnell
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