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首页> 外文期刊>International journal of systems science >Learning accurate very fast decision trees from uncertain data streams
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Learning accurate very fast decision trees from uncertain data streams

机译:从不确定的数据流中学习准确的非常快速的决策树

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摘要

Most existing works on data stream classification assume the streaming data is precise and definite. Such assumption, however, does not always hold in practice, since data uncertainty is ubiquitous in data stream applications due to imprecise measurement, missing values, privacy protection, etc. The goal of this paper is to learn accurate decision tree models from uncertain data streams for classification analysis. On the basis of very fast decision tree (VFDT) algorithms, we proposed an algorithm for constructing an uncertain VFDT tree with classifiers at tree leaves (uVFDTc). The uVFDTc algorithm can exploit uncertain information effectively and efficiently in both the learning and the classification phases. In the learning phase, it uses Hoeffding bound theory to learn from uncertain data streams and yield fast and reasonable decision trees. In the classification phase, at tree leaves it uses uncertain naive Bayes (UNB) classifiers to improve the classification performance. Experimental results on both synthetic and real-life datasets demonstrate the strong ability of uVFDTc to classify uncertain data streams. The use of UNB at tree leaves has improved the performance of uVFDTc, especially the any-time property, the benefit of exploiting uncertain information, and the robustness against uncertainty.
机译:现有的有关数据流分类的大多数工作都假定流数据是精确且确定的。但是,这种假设在实践中并不总是成立,因为由于测量不精确,值丢失,隐私保护等原因,数据不确定性在数据流应用程序中普遍存在。本文的目的是从不确定的数据流中学习准确的决策树模型用于分类分析。在非常快速决策树(VFDT)算法的基础上,我们提出了一种用于在树叶子上使用分类器构造不确定VFDT树的算法(uVFDTc)。 uVFDTc算法可以在学习和分类阶段中有效地利用不确定信息。在学习阶段,它使用Hoeffding界理论从不确定的数据流中学习,并生成快速而合理的决策树。在分类阶段,在树叶处,它使用不确定的朴素贝叶斯(UNB)分类器来提高分类性能。在合成数据集和实际数据集上的实验结果表明,uVFDTc能够对不确定的数据流进行分类。在树叶上使用UNB改善了uVFDTc的性能,尤其是随时性,改善了利用不确定信息的好处以及对不确定性的鲁棒性。

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