利用聚类改进决策树可视化

O. Parisot, Y. Didry, T. Tamisier, B. Otjacques
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引用次数: 4

摘要

决策树是简单而强大的决策支持工具,其图形化特性对于可视化分析任务非常有用。然而,当决策树由复杂的现实世界数据构建时,它们往往很大且难以显示。本文提出了一种优化决策树可视化表示的新颖方法。该方案将聚类和特征构建相结合,引入了一种考虑决策树视觉特性和准确性的聚类算法。原型已经实现,并通过在UCI数据集上进行的几个实验结果显示了所提出方法的优点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Clustering to Improve Decision Trees Visualization
Decision trees are simple and powerful decision support tools, and their graphical nature can be very useful for visual analysis tasks. However, decision trees tend to be large and hard to display when they are built from complex real world data. This paper proposes an original solution to optimize the visual representation of decision trees obtained from data. The solution combines clustering and feature construction, and introduces a new clustering algorithm that takes into account the visual properties and the accuracy of decision trees. A prototype has been implemented, and the benefits of the proposed method are shown using the results of several experiments performed on the UCI datasets.
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