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MR-Tree - A Scalable MapReduce Algorithm for Building Decision Trees

机译:MR-Tree-用于构建决策树的可伸缩MapReduce算法

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Learning decision trees against very large amountsof data is not practical on single node computers due to the huge amount of calculations required by this process. Apache Hadoop is a large scale distributed computing platform that runs on commodity hardware clusters and can be used successfully for data mining task against very large datasets. This work presents a parallel decision tree learning algorithm expressed in MapReduce programming model that runs on Apache Hadoop platform and has a very good scalability with dataset size.
机译:由于此过程需要大量计算,因此在单节点计算机上针对大量数据学习决策树是不切实际的。 Apache Hadoop是一个大型分布式计算平台,可以在商品硬件集群上运行,并且可以成功用于大型数据集的数据挖掘任务。这项工作提出了一种在MapReduce编程模型中表达的并行决策树学习算法,该算法在Apache Hadoop平台上运行,并且在数据集大小方面具有很好的可伸缩性。

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