Decision tree classifier: a detailed survey

Priyanka, Dharmender Kumar
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引用次数: 70

Abstract

Decision tree classifier (DTC) is one of the well-known methods for data classification. The most significant feature of DTC is its ability to change the complicated decision making problems into simple processes, thus finding a solution which is understandable and easier to interpret. This paper provides a brief review on various algorithms developed in literature for constructing and representing decision trees, splitting criteria for selecting best attribute and pruning methods. The readers will be able to understand why decision trees are more popular among all other methods of classification, what are their uses, limitations and applications in different diverse areas. They will also come to know about a decision tree induction algorithms, splitting criteria, pruning methods, concepts of ensemble methods, fuzzy decision trees, hybridisation of DTCs, etc. These enhancements are found very helpful in solving complex datasets with less computation in very short time period while achieving high accuracy.
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决策树分类器:详细调查
决策树分类器(DTC)是一种众所周知的数据分类方法。DTC最大的特点是能够将复杂的决策问题转化为简单的过程,从而找到易于理解和解释的解决方案。本文简要回顾了文献中用于构造和表示决策树的各种算法,选择最佳属性的分裂标准和修剪方法。读者将能够理解为什么决策树在所有其他分类方法中更受欢迎,它们的用途,局限性和在不同领域的应用。他们还将了解决策树的归纳算法、分裂标准、剪枝方法、集成方法的概念、模糊决策树、dtc的杂交等。这些增强对于在很短的时间内以更少的计算量解决复杂的数据集非常有帮助,同时达到高精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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