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Improving the accuracy of decision tree induction by feature preselection

机译:通过特征预选提高决策树归纳的准确性

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Selecting the right set of features for classification is one of the most important problems in designing a good classifier. Decision tree induction algorithms such as C4.5 have incorporated in their learning phase an automatic feature selection strategy, while some other statistical classification algorithms require the feature subset to be selected in a preprocessing phase. It is well known that correlated and irrelevant features may degrade the performance of the C4.5 algorithm. In our study, we evaluated the influence of feature preselection on the prediction accuracy of C4.5 using a real-world data set. We observed that accuracy of the C4.5 classifier could be improved with an appropriate feature preselection phase for the learning algorithm. Beyond that, the number of features used for classification can be reduced, which is important for image interpretation tasks since feature calculation is a time-consuming process.
机译:选择正确的特征集进行分类是设计好的分类器中最重要的问题之一。决策树归纳算法(例如C4.5)已在其学习阶段采用了自动特征选择策略,而其他一些统计分类算法则需要在预处理阶段中选择特征子集。众所周知,相关和无关的功能可能会降低C4.5算法的性能。在我们的研究中,我们使用真实数据集评估了特征预选对C4.5预测精度的影响。我们观察到,对于学习算法,通过适当的特征预选阶段可以提高C4.5分类器的准确性。除此之外,可以减少用于分类的特征数量,这对于图像解释任务很重要,因为特征计算是一个耗时的过程。

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