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VPRS based decision tree classifier

机译:基于VPRS的决策树分类器

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This paper analyzes the existing decision tree classification algorithms and finds that these algorithms based on variable precision rough set (VPRS) have better classification accuracies and can tolerate the noise data. But when constructing decision tree based on variable precision rough set, these algorithms have the following shortcomings: the choice of attribute is difficult and the decision tree classification accuracy is not high. Therefore, this paper proposes a new variable precision rough set based decision tree algorithm (IVPRSDT). This algorithm uses a new standard of attribute selection which considers comprehensively the classification accuracy and number of attribute values, that is, weighted roughness and complexity. At the same time support and confidence are introduced in the conditions of the corresponding node to stop splitting, and they can improve the algorithm's generalization ability. To reduce the impact of noise data and missing values, IVPRSDT uses the label predicted method based on match. The comparing experiments on twelve different data sets from the UCI Machine Learning Repository show that IVPRSDT can effectively improve the classification accuracy.
机译:本文分析了现有的决策树分类算法,并发现基于可变精度粗糙集(VPRS)的这些算法具有更好的分类精度,可以容忍噪声数据。但是,在基于可变精度粗糙集的基于变量精度粗糙集构建决策树时,这些算法具有以下缺点:属性的选择是困难的,决策树分类准确性不高。因此,本文提出了一种基于新的可变精密粗糙集决策树算法(IVPRSDT)。该算法使用新的属性选择标准,该标准是全面地考虑分类准确性和属性值的数量,即加权粗糙度和复杂性。同时在相应节点的条件下引入支持和置信度以停止分割,并且它们可以提高算法的泛化能力。为了减少噪声数据和缺失值的影响,IVPRSDT使用基于匹配的标签预测方法。从UCI机器学习存储库的12个不​​同数据集的比较实验表明,IVPRSDT可以有效地提高分类准确性。

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