差分进化算法在可解释分类模型构建中的应用

Rafael Rivera-López, Juana Canul-Reich
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引用次数: 6

摘要

在本章中,描述了基于差分进化的方法在诱导倾斜决策树(dt)中的应用。这种类型的决策树使用属性的线性组合来构建划分实例空间的斜超平面。斜向决策树比传统的单变量决策树更紧凑、更准确。另一方面,由于差分进化算法是一种求解实值参数优化问题的高效进化算法,而寻找最优超平面是一项艰巨的计算任务,因此选择元启发式算法进行近最优解的智能搜索。本章描述了两种方法:一种是实现递归划分策略来寻找决策树的每个内部节点的最合适的斜超平面,另一种是进行近最优斜决策树的全局搜索。实验结果的统计分析表明,与其他监督学习方法相比,这些方法作为决策树归纳过程表现出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Differential Evolution Algorithm in the Construction of Interpretable Classification Models
In this chapter, the application of a differential evolution-based approach to induce oblique decision trees (DTs) is described. This type of decision trees uses a linear combination of attributes to build oblique hyperplanes dividing the instance space. Oblique decision trees are more compact and accurate than the traditional univariate decision trees. On the other hand, as differential evolution (DE) is an efficient evolutionary algo- rithm (EA) designed to solve optimization problems with real-valued parameters, and since finding an optimal hyperplane is a hard computing task, this metaheuristic (MH) is chosen to conduct an intelligent search of a near-optimal solution. Two methods are described in this chapter: one implementing a recursive partitioning strategy to find the most suitable oblique hyperplane of each internal node of a decision tree, and the other conducting a global search of a near-optimal oblique decision tree. A statistical analysis of the experimental results suggests that these methods show better performance as decision tree induction procedures in comparison with other supervised learning approaches.
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