The refinement of machine learning strategies and deep convolutional networks led to the development of artificial systems whose functions resemble those of natural brains, suggesting that the two systems share the same computational principles. In this chapter, evidence is reviewed which indicates that the computational operations of natural systems differ in some important aspects from those implemented in artificial systems. Natural processing architectures are characterized by recurrence and therefore exhibit high-dimensional, non-linear dynamics. Moreover, they use learning mechanisms that support self-organization. It is proposed that these properties allow for computations that are notoriously difficult to realize in artificial syste...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
The brain is characterized by performing many different processing tasks ranging from elaborate proc...
Spatiotemporal activity dynamics with criticality have been widely observed in the cortex. In this t...
Computational systems are useful in neuroscience in many ways. For instance, they may be used to con...
Computational systems are useful in neuroscience in many ways. For instance, they may be used to con...
Current concepts of sensory processing in the cerebral cortex emphasize serial extraction and recomb...
There are more neurons in the human brain than seconds in a lifetime. Given this incredible number h...
International audienceIn this paper, dynamic neural fields are used to develop key features of a cort...
This paper addresses the question how generic microcircuits of neurons in different parts of the cor...
The discovery of stimulus induced synchronization in the visual cortex suggested the possibility tha...
At a first glance, artificial neural networks, with engineered learning algorithms and carefully cho...
A variety of anatomical and physiological evidence suggests that the brain performs computations usi...
Brains and computers are both dynamical systems that manipulate symbols, but they differ fundamental...
Objects in motion activate multiple cortical regions in every lobe of the human brain. Do these regi...
We present a complete overview of the computational power of recurrent neural networks involved in a...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
The brain is characterized by performing many different processing tasks ranging from elaborate proc...
Spatiotemporal activity dynamics with criticality have been widely observed in the cortex. In this t...
Computational systems are useful in neuroscience in many ways. For instance, they may be used to con...
Computational systems are useful in neuroscience in many ways. For instance, they may be used to con...
Current concepts of sensory processing in the cerebral cortex emphasize serial extraction and recomb...
There are more neurons in the human brain than seconds in a lifetime. Given this incredible number h...
International audienceIn this paper, dynamic neural fields are used to develop key features of a cort...
This paper addresses the question how generic microcircuits of neurons in different parts of the cor...
The discovery of stimulus induced synchronization in the visual cortex suggested the possibility tha...
At a first glance, artificial neural networks, with engineered learning algorithms and carefully cho...
A variety of anatomical and physiological evidence suggests that the brain performs computations usi...
Brains and computers are both dynamical systems that manipulate symbols, but they differ fundamental...
Objects in motion activate multiple cortical regions in every lobe of the human brain. Do these regi...
We present a complete overview of the computational power of recurrent neural networks involved in a...
How do humans and other animals learn new tasks? A wave of brain recording studies has investigated ...
The brain is characterized by performing many different processing tasks ranging from elaborate proc...
Spatiotemporal activity dynamics with criticality have been widely observed in the cortex. In this t...