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Automatically Classifying Sentences in Full-Text Biomedical Articles into Introduction Methods Results and Discussion

机译:将全文生物医学文章中的句子自动分类为简介方法结果和讨论

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摘要

Biomedical texts can be typically represented by four rhetorical categories: introduction, methods, results and discussion (IMRAD). Classifying sentences into these categories can benefit many other text-mining tasks. Although many studies have applied approaches to automatically classify sentences in MEDLINE abstracts into the IMRAD categories, few have explored the classification of sentences that appear in full-text biomedical articles. We explored different approaches to automatically classify a sentence in a full-text biomedical article into the IMRAD categories. Our best system is a support vector machine classifier that achieved 81.30% accuracy, which is significantly higher than baseline systems.
机译:生物医学文本通常可以用四个修辞类来表示:简介,方法,结果和讨论(IMRAD)。将句子分类为这些类别可以使许多其他文本挖掘任务受益。尽管许多研究已经应用了将MEDLINE摘要中的句子自动分类为IMRAD类别的方法,但是很少有人探索全文生物医学文章中出现的句子的分类。我们探索了将全文生物医学文章中的句子自动分类为IMRAD类别的不同方法。我们最好的系统是支持向量机分类器,其准确度达到81.30%,大大高于基线系统。

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