Combining Distributed Classifies by Stacking

Yanyan Wei, Taoshen Li, Zhihui Ge
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引用次数: 3

Abstract

Many current mining tasks analyze data in environments with distributed computing nodes. Classification in such scenario needs to perform local mining task in each data site and then integrate local classifiers to a global model of the data. However, integration strategy can influence the performance and complexity of the final model. In this paper, based on the formalization of combining multiple classifiers by stacking in Distributed Data Mining, a new strategy to from meta-level training set is proposed, which can describe the vote made by each base-level classifiers. The experiment results show that our method achieve better performance for those datasets with highly skewed class distribution.
通过堆叠组合分布式分类
当前许多挖掘任务都是在具有分布式计算节点的环境中分析数据。这种场景下的分类需要在每个数据站点执行本地挖掘任务,然后将本地分类器集成到数据的全局模型中。然而,集成策略会影响最终模型的性能和复杂性。本文基于分布式数据挖掘中多个分类器通过堆叠组合的形式化,提出了一种新的元级训练集策略,该策略可以描述每个基级分类器的投票情况。实验结果表明,对于类分布高度偏态的数据集,我们的方法取得了较好的性能。
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