The idea of a “memetic” spread of solutions through a human culture in parallel to their development is applied as a distributed approach to learning. Local parts of a problem are associated with a set of overlappingt localities in a space and solutions are then evolved in those localites. Good solutions are not only crossed with others to search for better solutions but also they propogate across the areas of the problem space where they are relatively successful. Thus the whole population co-evolves solutions with the domains in which they are found to work. This approach is compared to the equivalent global evolutionary computation approach with respect to predicting the occcurence of heart disease in the Cleveland data set. It grea...
AbstractThis paper presents a distributed genetic algorithm for the discovery of classification rule...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
Abstract: "In this paper we propose a distributed approach to the inductive learning problem and pre...
Niching methods are a useful extension of evolutionary computation that allow evolutionary algorithm...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
In some domains (e.g., molecular biology), data reposi-tories are large in size, dynamic, and physic...
In recent years, large-scale systems have become mainstream at a very high pace. Typical examples of...
We study the question of how a local learning algorithm, executed by multiple distributed agents, ca...
Since practical problems often are very complex with a large number of objectives it can be difficul...
In this work we propose a new distributed evolutionary algorithm that uses a proactive strategy to a...
Dealing with optimization problems with more than one objective has been an importantresearch area i...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
Distributed systems are one of the most vital components of the economy. The most promi-nent example...
Methods that generate networks sharing a given degree distribution and global clustering can induce ...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
AbstractThis paper presents a distributed genetic algorithm for the discovery of classification rule...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
Abstract: "In this paper we propose a distributed approach to the inductive learning problem and pre...
Niching methods are a useful extension of evolutionary computation that allow evolutionary algorithm...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
In some domains (e.g., molecular biology), data reposi-tories are large in size, dynamic, and physic...
In recent years, large-scale systems have become mainstream at a very high pace. Typical examples of...
We study the question of how a local learning algorithm, executed by multiple distributed agents, ca...
Since practical problems often are very complex with a large number of objectives it can be difficul...
In this work we propose a new distributed evolutionary algorithm that uses a proactive strategy to a...
Dealing with optimization problems with more than one objective has been an importantresearch area i...
It is a fact that traditional algorithms cannot look at a very large data set and plausibly find a g...
Distributed systems are one of the most vital components of the economy. The most promi-nent example...
Methods that generate networks sharing a given degree distribution and global clustering can induce ...
The genetic algorithm is a general purpose, population-based search algorithm in which the individua...
AbstractThis paper presents a distributed genetic algorithm for the discovery of classification rule...
Abstract—In this article, we evaluate the applicability of Genetic Programming (GP) for the evolutio...
Abstract: "In this paper we propose a distributed approach to the inductive learning problem and pre...