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Squeezing the Ensemble Pruning: Faster and More Accurate Categorization for News Portals

机译:压缩整体修剪:新闻门户网站的分类更快,更准确

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Recent studies show that ensemble pruning works as effective as traditional ensemble of classifiers (EoC). In this study, we analyze how ensemble pruning can improve text categorization efficiency in time-critical real-life applications such as news portals. The most crucial two phases of text categorization are training classifiers and assigning labels to new documents; but the latter is more important for efficiency of such applications. We conduct experiments on ensemble pruning-based news article categorization to measure its accuracy and time cost. The results show that our heuristics reduce the time cost of the second phase. Also we can make a trade-off between accuracy and time cost to improve both of them with appropriate pruning degrees.
机译:最近的研究表明,合奏修剪与传统的分类器合奏(EoC)一样有效。在这项研究中,我们分析了整体修剪如何在时间紧迫的现实生活应用程序(例如新闻门户)中提高文本分类效率。文本分类的最关键的两个阶段是训练分类器和为新文档分配标签。但是后者对于此类应用程序的效率更为重要。我们对基于整体修剪的新闻分类进行实验,以衡量其准确性和时间成本。结果表明,我们的启发式方法减少了第二阶段的时间成本。此外,我们可以在准确性和时间成本之间进行权衡,以通过适当的修剪度来同时改善两者。

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