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Improving ID3 Algorithm by Ignoring Minor Instances

机译:通过忽略次要实例来改进ID3算法

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Among various classification algorithms, ID3 is one of the most widely used and well-known tools that generates an efficient decision tree. Nevertheless, ID3 is too rigorous in generating the decision rules. As a result, the final decision tree may carry too many decision rules. Some of these decision rules may have very low number of instances which do not make significant change to the classification accuracy. The aim of this paper is to propose an approach to relax the rigorousness of the conventional ID3 algorithm by ignoring minor instances so that the resulting decision tree will have the lower number of depths yet produce promising accuracy. The proposed algorithm is examined on six datasets from UCI repository and Weka. The experimental results indicate that the proposed algorithm not only significantly reduces the maximum number of depths of the decision tree, but also retains the classification accuracy in the satisfying level. Moreover, the training time, the classification time, and the number of decision rules of the proposed algorithm are lower than those of the conventional ID3.
机译:在各种分类算法中,ID3是生成有效决策树的最广泛使用和众所周知的工具之一。但是,ID3在生成决策规则时过于严格。结果,最终决策树可能携带太多决策规则。这些决策规则中的某些决策规则可能包含非常少量的实例,这些实例不会对分类精度产生重大影响。本文的目的是提出一种通过忽略次要实例来放松常规ID3算法的严谨性的方法,以使最终的决策树将具有较少的深度,但仍具有可观的准确性。在UCI存储库和Weka的六个数据集上检查了提出的算法。实验结果表明,该算法不仅显着减少了决策树的最大深度,而且将分类精度保持在令人满意的水平。此外,所提出的算法的训练时间,分类时间和决策规则的数量比传统的ID3要少。

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