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An SVM-based high-quality article classifier for systematic reviews

机译:基于SVM的高质量文章分类器,用于系统评论

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Objective: To determine whether SVM-based classifiers, which are trained on a combination of inclusion and common exclusion articles, are useful to experts reviewing journal articles for inclusion during new systematic reviews.Methods: Test collections were built using the annotated reference files from 19 procedure and 4 drug systematic reviews. The classifiers were trained by balanced data sets, which were sampled using random sampling. This approach compared two balanced data sets, one with a combination of included and commonly excluded articles and one with a combination of included and excluded articles. AUCs were used as evaluation metrics.Results: The AUCs of the classifiers, which were trained on the balanced data set with included and commonly excluded articles, were significantly higher than those of the classifiers, which were trained on the balanced data set with included and excluded articles.Conclusion: Automatic, high-quality article classifiers using machine learning could reduce the workload of experts performing systematic reviews when topic-specific data are scarce. In particular, when used as training data, a combination of included and commonly excluded articles is more helpful than a combination of included and excluded articles.
机译:目的:确定是否在包含普通排除文章的组合上培训的基于SVM的分类器,这对于专家审查期刊文章是有用的,审查新系统评论中的纳入文章。方法:测试集合使用来自19的注释参考文件建立程序和4种药物系统评论。分类器由平衡数据集接受培训,使用随机采样进行采样。该方法比较了两个平衡数据集,其中一个具有包括的和常用的文章的组合,以及一个具有包括的和排除的文章的组合。 AUCS被用作评估指标。结果:分类器的AUC在包括包括和通常排除的文章中的平衡数据集上培训的分类器的AUC显着高于分类器的培训,这些分类器是在包含的平衡数据集上培训的分类器排除的文章。结论:自动,使用机器学习的高质量文章分类器可以减少在特定主题数据稀缺时执行系统审查的专家的工作量。特别地,当用作训练数据时,包括和常用的文章的组合比包括和排除的文章的组合更有用。

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