首页> 外文会议>Pacific Rim International Conference on Artificial Intelligence(PRICAI 2006); 20060807-11; Guilin(CN) >Combining Multiple Sets of Rules for Improving Classification Via Measuring Their Closenesses
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Combining Multiple Sets of Rules for Improving Classification Via Measuring Their Closenesses

机译:组合多套规则以通过测量其紧密度来改善分类

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摘要

In this paper, we propose a new method for measuring the closeness of multiple sets of rules that are combined using Dempster's rule of combination to improve classification performance. The closeness provides an insight into combining multiple sets of rules in classification — in what circumambience the performance of combinations of some sets of rules using Dempster's rule is better than that of others. Experiments have been carried out over the 20-newsgroups benchmark data collection, and the empirical results show that when the closeness between two sets of rules is higher than that of others, the performance of its combination using Dempster's rule is better than the others.
机译:在本文中,我们提出了一种新的方法来测量使用Dempster组合规则来组合的多组规则的紧密度,以提高分类性能。紧密度提供了在分类中组合多组规则的见解-在何种情况下使用Dempster规则组合某些规则集的性能要优于其他规则。在20个新闻组的基准数据收集上进行了实验,实证结果表明,当两组规则之间的紧密度高于其他规则时,使用Dempster规则组合的组合的性能要优于其他规则。

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