The most successful multi-objective metaheuristics, such as NSGA II and SPEA 2, usually apply a form of elitism in the search. However, there are multi-objective problems where this approach leads to a major loss of population diversity early in the search. In earlier work, the authors applied a multi-objective metaheuristic to the problem of rule induction for predictive classification, minimizing rule complexity and misclassification costs. While high quality results were obtained, this problem was found to suffer from such a loss of diversity. This paper describes the use of both linear combinations of objectives and modified dominance relations to control population diversity, producing higher quality results in shorter run time
In multi/many-objective evolutionary algorithms (MOEAs), to alleviate the degraded convergence press...
International audienceLearning the parameters of a Majority Rule Sorting model (MR-Sort) through lin...
Both convergence and diversity are crucial to evolutionary many-objective optimization, whereas mos...
The most successful multi-objective metaheuristics, such as NSGA II and SPEA 2, usually apply a form...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
Parent selection in evolutionary algorithms for multi-objective optimization is usually performed by...
Parent selection in evolutionary algorithms for multi-objective optimization is usually performed by...
Available online 19 June 2018Parent selection in evolutionary algorithms for multi-objective optimis...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
A new evolutionary multi-objective crowding algorithm (EMOCA) is evaluated using nine benchmark mult...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Metaheuristic algorithms have been used successfully in a number of data mining contexts and specifi...
Both convergence and diversity are crucial to evolutionary many-objective optimization, whereas most...
This paper considers the related algorithms, crowding and preselection, as potential multimodal func...
In multi/many-objective evolutionary algorithms (MOEAs), to alleviate the degraded convergence press...
International audienceLearning the parameters of a Majority Rule Sorting model (MR-Sort) through lin...
Both convergence and diversity are crucial to evolutionary many-objective optimization, whereas mos...
The most successful multi-objective metaheuristics, such as NSGA II and SPEA 2, usually apply a form...
Previous research produced a multi-objective metaheuristic for partial classification, where rule do...
In this paper, we experiment with a combination of innovative approaches to rule induction to encour...
Parent selection in evolutionary algorithms for multi-objective optimization is usually performed by...
Parent selection in evolutionary algorithms for multi-objective optimization is usually performed by...
Available online 19 June 2018Parent selection in evolutionary algorithms for multi-objective optimis...
The file attached to this record is the author's final peer reviewed version. The Publisher's final ...
A new evolutionary multi-objective crowding algorithm (EMOCA) is evaluated using nine benchmark mult...
Multi-objective metaheuristics have previously been applied to partial classification, where the obj...
Metaheuristic algorithms have been used successfully in a number of data mining contexts and specifi...
Both convergence and diversity are crucial to evolutionary many-objective optimization, whereas most...
This paper considers the related algorithms, crowding and preselection, as potential multimodal func...
In multi/many-objective evolutionary algorithms (MOEAs), to alleviate the degraded convergence press...
International audienceLearning the parameters of a Majority Rule Sorting model (MR-Sort) through lin...
Both convergence and diversity are crucial to evolutionary many-objective optimization, whereas mos...