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Optimising Decision Classifications Using Genetic Algorithms

机译:使用遗传算法优化决策分类

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A difficult problem associated with traditional decision tree rule induction algorithms is how to achieve common currency between the actual classification accuracy and the distribution of this accuracy between the outcome classes. This paper introduces a novel method which successfully shows that it is possible to attain decision trees which exhibit both good performance and balance. The method first involves the induction of a decision tree, which is then fuzzified using a Genetic Algorithm (GA). Each solution generated by the GA produces a set of fuzzy regions which are mapped onto all nodes in the tree. The GA's fitness function consists of two components : classification accuracy and balance which are optimised concurrently. Three alternative functions are defined, each of which opposes different penalties on the classification accuracy depending on the selected weighting associated witht he balance component. The method is applied to two real world data sets and is shown to achieve a high degree of common currency between accuracy and balance.
机译:与传统决策树规则归纳算法相关的一个难题是如何在实际分类准确度和结果准确度在结果类别之间的分配之间实现通用。本文介绍了一种新颖的方法,该方法成功地表明可以获得具有良好性能和平衡性的决策树是可能的。该方法首先涉及决策树的归纳,然后使用遗传算法(GA)将其模糊化。 GA生成的每个解决方案都会产生一组模糊区域,这些区域被映射到树中的所有节点上。 GA的适应度函数由两个部分组成:分类准确性和平衡,它们会同时进行优化。定义了三个替代函数,每个函数根据与平衡组件相关联的选定权重,对分类精度进行不同的惩罚。该方法应用于两个现实世界的数据集,并显示出在准确性和平衡性之间达到高度的通用性。

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