Modular organization characterizes many complex networks occurring in nature, including the brain. In this paper we show that modular structure may be responsible for increasing the robustness of certain dynamical states of such systems. In a network of threshold-activated binary elements, we observe that the basins of attractors, corresponding to patterns that have been embedded using a learning rule, occupy maximum volume in phase space at an optimal modularity. Simultaneously, the convergence time to these attractors decreases as a result of cooperative dynamics between the modules. The role of modularity in increasing global stability of certain desirable attractors of a system may provide a clue to its evolution and ubiquity in natural...
International audienceThis paper investigates questions related to modularity in biological interact...
Modularity structures are common in various social and biological networks. However, its dynamical o...
To investigate the relations between structure and function in both artificial and natural neural ne...
Some biologists have abandoned the idea that computational efficiency in processing multipart tasks ...
The neural network is a powerful computing framework that has been exploited by biological evolution...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely in...
(A) Stochastic binary neuron model. Each neuron computes a weighted sum of network activity in the p...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely int...
A network of 32 or 64 connected neural masses, each representing a large population of interacting e...
Abstract. There exist many ideas and assumptions about the development and meaning of modularity in ...
The understanding of neural activity patterns is fundamentally linked to an understanding of how the...
<div><p>A long-standing goal in artificial intelligence is creating agents that can learn a variety ...
Abstract. This paper investigates questions related to modularity in biological interaction networks...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
The state-space of a discrete dynamical network is connected into basins of attraction, mathematical...
International audienceThis paper investigates questions related to modularity in biological interact...
Modularity structures are common in various social and biological networks. However, its dynamical o...
To investigate the relations between structure and function in both artificial and natural neural ne...
Some biologists have abandoned the idea that computational efficiency in processing multipart tasks ...
The neural network is a powerful computing framework that has been exploited by biological evolution...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely in...
(A) Stochastic binary neuron model. Each neuron computes a weighted sum of network activity in the p...
The human brain exhibits a complex structure made of scale-free highly connected modules loosely int...
A network of 32 or 64 connected neural masses, each representing a large population of interacting e...
Abstract. There exist many ideas and assumptions about the development and meaning of modularity in ...
The understanding of neural activity patterns is fundamentally linked to an understanding of how the...
<div><p>A long-standing goal in artificial intelligence is creating agents that can learn a variety ...
Abstract. This paper investigates questions related to modularity in biological interaction networks...
Modular neural networks have a number of advantages when used to control robots. They reduce the num...
The state-space of a discrete dynamical network is connected into basins of attraction, mathematical...
International audienceThis paper investigates questions related to modularity in biological interact...
Modularity structures are common in various social and biological networks. However, its dynamical o...
To investigate the relations between structure and function in both artificial and natural neural ne...