Abstract. There exist many ideas and assumptions about the development and meaning of modularity in biological and technical neural systems. We empirically study the evolution of connectionist models in the context of modular problems. For this purpose, we define quantitative measures for the degree of modularity and monitor them during evolutionary processes under different constraints. It turns out that the modularity of the problem is reflected by the architecture of adapted systems, although learning can counterbalance some imperfection of the architecture. The demand for fast learning systems increases the selective pressure towards modularity.
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
This paper considers neural computing models for information processing in terms of collections of s...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
Some biologists have abandoned the idea that computational efficiency in processing multipart tasks ...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Modularity is an architectural trait that is prominent in biological neural networks, but strangely ...
Modularity is a major feature of biological central nervous systems. For ex-ample, the human/primate...
International audienceA long-standing goal in artificial intelligence is creating agents that can le...
To investigate the relations between structure and function in both artificial and natural neural ne...
One of humanity’s grand scientific challenges is to create ar-tificially intelligent robots that riv...
It is well known that the human brain is highly modular, having a structural and functional organiza...
I introduce a novel method for evolving modularity in gene regulatory networks. Like previous models...
The neural network is a powerful computing framework that has been exploited by biological evolution...
Human learning is a complex phenomenon requiring flexibility to adapt existing brain function and pr...
The main focus of the paper is on the ability of the neuro-evolutionary method called Assembler Enco...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
This paper considers neural computing models for information processing in terms of collections of s...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
Some biologists have abandoned the idea that computational efficiency in processing multipart tasks ...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Modularity is an architectural trait that is prominent in biological neural networks, but strangely ...
Modularity is a major feature of biological central nervous systems. For ex-ample, the human/primate...
International audienceA long-standing goal in artificial intelligence is creating agents that can le...
To investigate the relations between structure and function in both artificial and natural neural ne...
One of humanity’s grand scientific challenges is to create ar-tificially intelligent robots that riv...
It is well known that the human brain is highly modular, having a structural and functional organiza...
I introduce a novel method for evolving modularity in gene regulatory networks. Like previous models...
The neural network is a powerful computing framework that has been exploited by biological evolution...
Human learning is a complex phenomenon requiring flexibility to adapt existing brain function and pr...
The main focus of the paper is on the ability of the neuro-evolutionary method called Assembler Enco...
A long-standing goal in artificial intelligence is creating agents that can learn a variety of diffe...
This paper considers neural computing models for information processing in terms of collections of s...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...