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Automatic Design of Decision-Tree Algorithms with Evolutionary Algorithms

机译:基于进化算法的决策树算法自动设计

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This study reports the empirical analysis of a hyper-heuristic evolutionary algorithm that is capable of automatically designing top-down decision-tree induction algorithms. Top-down decision-tree algorithms are of great importance, considering their ability to provide an intuitive and accurate knowledge representation for classification problems. The automatic design of these algorithms seems timely, given the large literature accumulated over more than 40 years of research in the manual design of decision-tree induction algorithms. The proposed hyper-heuristic evolutionary algorithm, HEAD-DT, is extensively tested using 20 public UCI datasets and 10 microar-ray gene expression datasets. The algorithms automatically designed by HEAD-DT are compared with traditional decision-tree induction algorithms, such as C4.5 and CART. Experimental results show that HEAD-DT is capable of generating algorithms which are significantly more accurate than C4.5 and CART.
机译:这项研究报告了一种能够自动设计自上而下的决策树归纳算法的超启发式进化算法的经验分析。自上而下的决策树算法非常重要,考虑到它们能够为分类问题提供直观,准确的知识表示。考虑到在决策树归纳算法的手动设计中40多年的研究积累了大量文献,这些算法的自动设计似乎是及时的。拟议的超启发式进化算法HEAD-DT已使用20个公共UCI数据集和10个微弧基因表达数据集进行了广泛测试。将HEAD-DT自动设计的算法与传统的决策树归纳算法(例如C4.5和CART)进行比较。实验结果表明,HEAD-DT能够生成比C4.5和CART更准确的算法。

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