Experimental methods in neuroscience, such as calcium-imaging and recordings with multi-electrode arrays, are advancing at a rapid pace. They produce insight into the simultaneous activity of large numbers of neurons, and into plasticity processes in the brains of awake and behaving animals. These new data constrain models for neural computation and network plasticity that underlie perception, cognition, behavior, and learning. I will discuss in this short article four such constraints: inherent recurrent network activity and heterogeneous dynamic properties of neurons and synapses, stereotypical spatio-temporal activity patterns in networks of neurons, high trial-to-trial variability of network responses, and functional stability in spite ...
Human cognition depends on complex and coordinated activity of neural populations, which are enabled...
There are more neurons in the human brain than seconds in a lifetime. Given this incredible number h...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Experimental methods in neuroscience, such as calcium-imaging and recordings with multi-electrode ar...
It is commonly believed that our brains serve as information processing systems. Therefore, common m...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
Neuroscience is the study of the brain. It is an interdisciplinary field. At one level, behavioral t...
The science of brain function has a long and vibrant history. Recent technological developments have...
Abstract: Understanding the rules by which brain networks represent incoming stimuli in population a...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Synapses and neural connectivity are plastic and shaped by experience. But to what extent does conne...
The aim of this book is to describe the types of computation that can be performed by biologically p...
Our brains are formed by networks of neurons and other cells which receive, filter, store and proces...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
Animals exhibit a remarkable ability to learn and remember new behaviors, skills, and associations t...
Human cognition depends on complex and coordinated activity of neural populations, which are enabled...
There are more neurons in the human brain than seconds in a lifetime. Given this incredible number h...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Experimental methods in neuroscience, such as calcium-imaging and recordings with multi-electrode ar...
It is commonly believed that our brains serve as information processing systems. Therefore, common m...
Computational neuroscience is in the midst of constructing a new framework for understanding the bra...
Neuroscience is the study of the brain. It is an interdisciplinary field. At one level, behavioral t...
The science of brain function has a long and vibrant history. Recent technological developments have...
Abstract: Understanding the rules by which brain networks represent incoming stimuli in population a...
Self-organization in biological nervous systems during the lifetime is known to largely occur throug...
Synapses and neural connectivity are plastic and shaped by experience. But to what extent does conne...
The aim of this book is to describe the types of computation that can be performed by biologically p...
Our brains are formed by networks of neurons and other cells which receive, filter, store and proces...
A major challenge in neuroscience is to reverse engineer the brain and understand its information pr...
Animals exhibit a remarkable ability to learn and remember new behaviors, skills, and associations t...
Human cognition depends on complex and coordinated activity of neural populations, which are enabled...
There are more neurons in the human brain than seconds in a lifetime. Given this incredible number h...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...