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Managing Population Diversity Through the Use of Weighted Objectives and Modified Dominance: An Example from Data Mining

机译:通过使用加权目标和修改的主导地位管理人口多样性:来自数据挖掘的示例

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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 times.
机译:最成功的多目标核心学习,如NSGA II和SPEA 2,通常在搜索中申请一系列精英主义。但是,在搜索中,这种方法有多目标问题导致人口多样性的主要损失。在早期的工作中,作者对预测分类的规则诱导问题应用了多目标成群制,最大限度地减少了规则复杂性和错误分类成本。虽然获得了高质量的结果,但发现这个问题遭受了这种多样性的损失。本文介绍了目的地的线性组合和改进的优势关系来控制人口多样性,产生更高的质量导致较短的运行时间。

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