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ECAL
2001
Springer

Pareto Optimality in Coevolutionary Learning

13 years 9 months ago
Pareto Optimality in Coevolutionary Learning
We develop a novel coevolutionary algorithm based upon the concept of Pareto optimality. The Pareto criterion is core to conventional multi-objective optimization (MOO) algorithms. We can think of agents in a coevolutionary system as performing MOO, as well: An agent interacts with many other agents, each of which can be regarded as an objective for optimization. We adapt the Pareto concept to allow agents to follow gradient and create gradient for others to follow, such that coevolutionary learning succeeds. We demonstrate our Pareto coevolution methodology with the majority function, a density classification task for cellular automata.
Sevan G. Ficici, Jordan B. Pollack
Added 28 Jul 2010
Updated 28 Jul 2010
Type Conference
Year 2001
Where ECAL
Authors Sevan G. Ficici, Jordan B. Pollack
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