Combining Classifiers and User Feedback for Disambiguating Author Names

Emília A. de Souza, Anderson A. Ferreira, Marcos André Gonçalves
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引用次数: 2

Abstract

Historically, supervised methods have been the most effective ones for author name disambiguation tasks. In here, we propose a specific manner to combine supervised techniques along with user feedback. Although, we use supervised techniques, the only user effort is to provide feedback on results since initial training data is automatically generated. Our experiments show gains up to 20% in the disambiguation performance against representative baselines.
结合分类器和用户反馈消除作者姓名歧义
从历史上看,监督方法是作者姓名消歧任务中最有效的方法。在这里,我们提出了一种结合监督技术和用户反馈的具体方式。尽管我们使用了监督技术,但由于初始训练数据是自动生成的,因此用户唯一的工作就是提供对结果的反馈。我们的实验表明,针对代表性基线的消歧性能提高了20%。
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