A Novel Five-Step Data Mining Algorithm

Wang Yiwen
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引用次数: 1

Abstract

Based on the traditional data mining algorithm, a novel data mining algorithm is proposed. This algorithm consists of 5 steps: the first step, set the tree set; the second step, set the window third, subtree contribution; decision tree construction; the fourth step test, positive and negative examples set; the fifth step, expand the achievements window. The experimental study on open source data sets. The results showed that the five step proposed data mining method, not only can build a more concise decision tree, data mining and the accuracy is also higher than the traditional decision tree method.
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一种新的五步数据挖掘算法
在传统数据挖掘算法的基础上,提出了一种新的数据挖掘算法。该算法包括5步:第一步,设置树集;第二步,设置窗口第三步,子树贡献;决策树构造;第四步测试,正反例设置;第五步,展开成就窗口。开源数据集的实验研究。结果表明,提出的五步数据挖掘方法,不仅可以构建更加简洁的决策树,而且数据挖掘的准确率也高于传统的决策树方法。
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