Standard evolutionary dynamics is limited by the constraints of the genetic system. A central message of evolutionary neurodynamics is that evolutionary dynamics in the brain can happen in a neuronal niche in real time, despite the fact that neurons do not reproduce. We show that Hebbian learning and structural synaptic plasticity broaden the capacity for informational replication and guided variability provided a neuronally plausible mechanism of replication is in place. The synergy between learning and selection is more efficient than the equivalent search by mutation selection. We also consider asymmetric landscapes and show that the learning weights become correlated with the fitness gradient. That is, the neuronal complexes learn the l...
memory in biological neural networks. Similarly, artificial neural networks could benefit from modul...
Funding: This work was funded by EP/I032606/1, http://www.epsrc.ac.uk/, Engineering and Physical Sci...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
Standard evolutionary dynamics is limited by the constraints of the genetic system. A central messag...
Background: The fact that surplus connections and neurons are pruned during development is well esta...
Modern Machine learning techniques take advantage of the exponentially rising calculation power in n...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
A central question in brain evolution is how species-typical behaviors, and the neural function-stru...
It is hypothesised that one of the main reasons evolution has produced such a tremendous diversity o...
Intelligent organisms face a variety of tasks requiring the acquisition of expertise within a specif...
What is the relationship between the complexity and the fitness of evolved organisms, whether natura...
Neuromodulation is considered a key factor for learning and memory in biological neural networks. Si...
What genotypic features explain the evolvability of organisms that have to accomplish many different...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
memory in biological neural networks. Similarly, artificial neural networks could benefit from modul...
Funding: This work was funded by EP/I032606/1, http://www.epsrc.ac.uk/, Engineering and Physical Sci...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
Standard evolutionary dynamics is limited by the constraints of the genetic system. A central messag...
Background: The fact that surplus connections and neurons are pruned during development is well esta...
Modern Machine learning techniques take advantage of the exponentially rising calculation power in n...
Neuroevolution, i.e. evolving artificial neural networks with genetic algorithms, has been highly ef...
The significant role of dendritic processing within neuronal networks has become increasingly clear....
A central question in brain evolution is how species-typical behaviors, and the neural function-stru...
It is hypothesised that one of the main reasons evolution has produced such a tremendous diversity o...
Intelligent organisms face a variety of tasks requiring the acquisition of expertise within a specif...
What is the relationship between the complexity and the fitness of evolved organisms, whether natura...
Neuromodulation is considered a key factor for learning and memory in biological neural networks. Si...
What genotypic features explain the evolvability of organisms that have to accomplish many different...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...
memory in biological neural networks. Similarly, artificial neural networks could benefit from modul...
Funding: This work was funded by EP/I032606/1, http://www.epsrc.ac.uk/, Engineering and Physical Sci...
Efficient search in vast combinatorial spaces, such as those of possible action sequences, linguisti...