International audienceIn this paper, we study instances of complex neural networks, i.e. neural netwo rks with complex topologies. We use Self-Organizing Map neural networks whose n eighbourhood relationships are defined by a complex network, to classify handwr itten digits. We show that topology has a small impact on performance and robus tness to neuron failures, at least at long learning times. Performance may howe ver be increased (by almost $10\%$) by artificial evolution of the network topo logy. In our experimental conditions, the evolved networks are more random than their parents, but display a more heterogeneous degree distribution
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
Neuroevolution methods evolve the weights of a neural network, and in some cases the topology, but l...
International audienceIn this paper, we study instances of complex neural networks, i.e. neural netw...
Complex network science is an interdisciplinary field of study based on graph theory, statistical me...
An important question in neuroevolution is how to gain an advantage from evolving neural network top...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
We present Turing's neural-network-like structures (unorganized machines) and compare them to ...
Abstract:- We propose a new self-organizing neural model that considers a dynamic topology among neu...
Looking to nature as inspiration, for at least the past 25 years, researchers in the field of neuroe...
The topology of artificial neural networks has a significant effect on their performance. Characteri...
This paper establishes a new constrained combinatorial optimization approach to the design of cellul...
We present an approach to investigate the dependence of the capabilities of neural networks on their...
The analysis of brain network topological features has served to better understand these networks an...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
Neuroevolution methods evolve the weights of a neural network, and in some cases the topology, but l...
International audienceIn this paper, we study instances of complex neural networks, i.e. neural netw...
Complex network science is an interdisciplinary field of study based on graph theory, statistical me...
An important question in neuroevolution is how to gain an advantage from evolving neural network top...
The competitive learning is an adaptive process in which the neurons in a neural network gradually b...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
We present Turing's neural-network-like structures (unorganized machines) and compare them to ...
Abstract:- We propose a new self-organizing neural model that considers a dynamic topology among neu...
Looking to nature as inspiration, for at least the past 25 years, researchers in the field of neuroe...
The topology of artificial neural networks has a significant effect on their performance. Characteri...
This paper establishes a new constrained combinatorial optimization approach to the design of cellul...
We present an approach to investigate the dependence of the capabilities of neural networks on their...
The analysis of brain network topological features has served to better understand these networks an...
We extend the study of learning and generalization in feed forward Boolean networks to random Boolea...
An important phenomenon seen in many areas of biological brains and recently in deep learning archit...
Neuroevolution methods evolve the weights of a neural network, and in some cases the topology, but l...