集成系统设计中好坏分集度量的应用:一种遗传算法方法

Antonino Feitosa Neto, A. Canuto, Teresa B Ludermir
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引用次数: 4

摘要

本文研究了当明确地用于指导遗传算法的搜索以设计集成系统时,好的和坏的多样性度量的影响。然后,我们分析了分类误差、良好多样性和不良多样性之间的最佳目标集以及它们的所有组合。在本分析中,我们使用NSGA II算法来生成集成系统,使用k-NN作为单个分类器,使用多数投票作为组合方法。本研究的主要目的是确定哪一组物镜产生更精确的集合。此外,我们的目的是分析多样性措施(好的和坏的多样性)是否对集成的构建有积极的影响,以及它们是否可以取代分类误差作为优化目标,而不会导致生成的集成的精度水平损失。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using good and bad diversity measures in the design of ensemble systems: A genetic algorithm approach
This paper investigates the influence of measures of good and bad diversity when used explicitly to guide the search of a genetic algorithm to design ensemble systems. We then analyze what the best set of objectives between classification error, good diversity and bad diversity as well as all combination of them. In this analysis, we make use of the NSGA II algorithm in order to generate ensemble systems, using k-NN as individual classifiers and majority vote as the combination method. The main goal of this investigation is to determine which set of objectives generates more accurate ensembles. In addition, we aim to analyze whether or not the diversity measures (good and bad diversity) have a positive effect in the construction of ensembles and if they can replace the classification error as optimization objective without causing losses in the accuracy level of the generated ensembles.
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