Neuronal circuits in the rodent barrel cortex are characterized by stable low firing rates. However, recent experiments show that short spike trains elicited by electrical stimulation in single neurons can induce behavioral responses. Hence, the underlying neural networks provide stability against internal fluctuations in the firing rate, while simultaneously making the circuits sensitive to small external perturbations. Here we studied whether stability and sensitivity are affected by the connectivity structure in recurrently connected spiking networks. We found that anti-correlation between the number of afferent (in-degree) and efferent (out-degree) synaptic connections of neurons increases stability against pathological bursting, relati...
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
textabstractNeuronal circuits in the rodent barrel cortex are characterized by stable low firing rat...
Neuronal networks in rodent barrel cortex are characterized by stable low baseline firing rates. How...
textabstractNeuronal networks in rodent barrel cortex are characterized by stable low baseline firin...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
A central question in neuroscience is to understand how noisy firing patterns are used to transmit i...
Information processing in the brain crucially depends on the topology of the neuronal con-nections. ...
Neurons communicate and transmit information predominantly through spikes. Given that experimentally...
A neuronal network can be represented as a directed graph. Each neuron corresponds to a node and eac...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
A recurrent network of 21 linear integrate-and-fire (LIF) neurons (14 excitatory; 7 inhibitory) conn...
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
textabstractNeuronal circuits in the rodent barrel cortex are characterized by stable low firing rat...
Neuronal networks in rodent barrel cortex are characterized by stable low baseline firing rates. How...
textabstractNeuronal networks in rodent barrel cortex are characterized by stable low baseline firin...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
A central question in neuroscience is to understand how noisy firing patterns are used to transmit i...
Information processing in the brain crucially depends on the topology of the neuronal con-nections. ...
Neurons communicate and transmit information predominantly through spikes. Given that experimentally...
A neuronal network can be represented as a directed graph. Each neuron corresponds to a node and eac...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
A recurrent network of 21 linear integrate-and-fire (LIF) neurons (14 excitatory; 7 inhibitory) conn...
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...
Deep feedforward and recurrent rate-based neural networks have become successful functional models o...