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Many-Objective Cooperative Co-evolutionary Feature Selection: A Lexicographic Approach

机译:许多客观合作共同进化特征选择:一种词典方法

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This paper presents a new wrapper method able to optimize simultaneously the parameters of the classifier while the size of the subset of features that better describe the input dataset is also being minimized. The search algorithm used for this purpose is based on a co-evolutionary algorithm optimizing several objectives related with different desirable properties for the final solutions, such as its accuracy, its final number of features, and the generalization ability of the classifier. Since these objectives can be sorted according to their priorities, a lexicographic approach has been applied to handle this many-objective problem, which allows the use of a simple evolutionary algorithm to evolve each one of the different sub-populations.
机译:本文介绍了一个新的包装方法,能够同时优化分类器的参数,而更好地描述输入数据集的特征子集的大小也被最小化。用于此目的的搜索算法基于共同进化算法,优化与最终解决方案相关的多种有关的目标,例如其精度,其最终特征和分类器的泛化能力。由于这些目标可以根据其优先事项进行排序,因此已经应用了词典方法来处理这种许多客观问题,这允许使用简单的进化算法来发展每个不同的子群体。

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