In some circumstances complex adaptive systems composed of numerous self-interested agents can self-organise into structures that enhance global adaptation, efficiency or function. However, the general conditions for such an outcome are poorly understood and present a fundamental open question for domains as varied as ecology, sociology, economics, organismic biology and technological infrastructure design. In contrast, sufficient conditions for artificial neural networks to form structures that perform collective computational processes such as associative memory/recall, classification, generalisation and optimisation, are well-understood. Such global functions within a single agent or organism are not wholly surprising since the mechanism...
Complex systems can often be modelled as networks, in which their basic units are represented by abs...
Endowing agents with “social rationality ” [10, 12, 11] can aid overall efficiency in tasks where co...
Neural networks have been widely used in agent learning architectures; however, learnings for one ta...
Complex adaptive systems composed of self-interested agents can in some circumstances self-organise ...
The conditions under which numerous independently-motivated components or agents in a complex system...
Simple distributed strategies that modify the behaviour of selfish individuals in a manner that enha...
Abstract. Often the selfish and strong are believed to be favored by natural selection, even though ...
Adaptive social structures are known to promote the evolution of cooperation. However, up to now the...
Often the selfish and strong are believed to be favored by natural selection, even though cooperativ...
The dynamics on networks and the dynamics of networks are usually entangled with each other in many...
Ecological communities are complex, self-organising systems of interacting species exhibiting import...
A generic property of biological, social and economical networks is their ability to evolve in time...
We examine the problem of adaptation and learning over networks with selfish agents. In order to mot...
This paper investigates the evolution of cooperation in iterated Prisoner's Dilemma (IPD) games with...
Endowing agents with “social rationality ” [10, 12, 11] can aid overall efficiency in tasks where co...
Complex systems can often be modelled as networks, in which their basic units are represented by abs...
Endowing agents with “social rationality ” [10, 12, 11] can aid overall efficiency in tasks where co...
Neural networks have been widely used in agent learning architectures; however, learnings for one ta...
Complex adaptive systems composed of self-interested agents can in some circumstances self-organise ...
The conditions under which numerous independently-motivated components or agents in a complex system...
Simple distributed strategies that modify the behaviour of selfish individuals in a manner that enha...
Abstract. Often the selfish and strong are believed to be favored by natural selection, even though ...
Adaptive social structures are known to promote the evolution of cooperation. However, up to now the...
Often the selfish and strong are believed to be favored by natural selection, even though cooperativ...
The dynamics on networks and the dynamics of networks are usually entangled with each other in many...
Ecological communities are complex, self-organising systems of interacting species exhibiting import...
A generic property of biological, social and economical networks is their ability to evolve in time...
We examine the problem of adaptation and learning over networks with selfish agents. In order to mot...
This paper investigates the evolution of cooperation in iterated Prisoner's Dilemma (IPD) games with...
Endowing agents with “social rationality ” [10, 12, 11] can aid overall efficiency in tasks where co...
Complex systems can often be modelled as networks, in which their basic units are represented by abs...
Endowing agents with “social rationality ” [10, 12, 11] can aid overall efficiency in tasks where co...
Neural networks have been widely used in agent learning architectures; however, learnings for one ta...