作者
Olcay Taner Yıldız, Onur Dikmen
发表日期
2007/5/1
期刊
Pattern Recognition Letters
卷号
28
期号
7
页码范围
825-832
出版商
North-Holland
简介
Univariate decision tree algorithms are widely used in data mining because (i) they are easy to learn (ii) when trained they can be expressed in rule based manner. In several applications mainly including data mining, the dataset to be learned is very large. In those cases it is highly desirable to construct univariate decision trees in reasonable time. This may be accomplished by parallelizing univariate decision tree algorithms. In this paper, we first present two different univariate decision tree algorithms C4.5 and univariate linear discriminant tree. We show how to parallelize these algorithms in three ways: (i) feature based; (ii) node based; (iii) data based manners. Experimental results show that performance of the parallelizations highly depend on the dataset and the node based parallelization demonstrate good speedups.
引用总数
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学术搜索中的文章
OT Yıldız, O Dikmen - Pattern Recognition Letters, 2007