Non-sequential partitioning approaches to decision tree classifier

Shankru Guggari , Vijayakumar Kadappa , V. Umadevi
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引用次数: 18

Abstract

Decision tree is a well-known classifier which is widely used in real-world applications. It is easy to interpret, however it suffers from instability and lower classification performance for high-dimensionality datasets due to curse of dimensionality. Feature set partitioning is a novel concept to address the higher dimensionality problem by dividing the feature set into subsets (blocks). Many of the existing partitioning based decision tree approaches are sequential in nature, which lack logical relationships amongst the features. In this work, we propose novel non-sequential feature set partitioning methods by exploiting the ideas of Ferrer Diagram and Bell Triangle to create feature blocks with a mix of low, medium, and high correlation features. The experimental results on 11 UCI and KEEL datasets demonstrate the superiority of the proposed partitioning methods, upto 5% higher classification accuracy, over NBTree, BFTree, Serial-CMFP partitioning method, and classical decision tree techniques. The proposed methods also exhibit improved stability as compared to other decision tree methods.

决策树分类器的非顺序划分方法
决策树是一种众所周知的分类器,在实际应用中得到了广泛的应用。它易于解释,但由于维度的诅咒,它在高维数据集上存在不稳定性和较低的分类性能。特征集划分是一种通过将特征集划分为子集(块)来解决高维问题的新概念。许多现有的基于划分的决策树方法本质上是顺序的,缺乏特征之间的逻辑关系。在这项工作中,我们提出了新的非顺序特征集划分方法,通过利用费雷尔图和钟三角形的思想来创建混合低、中、高相关特征的特征块。在11个UCI和KEEL数据集上的实验结果表明,与NBTree、BFTree、Serial-CMFP划分方法和经典决策树方法相比,该方法的分类准确率提高了5%。与其他决策树方法相比,所提出的方法也表现出更好的稳定性。
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