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Using the argumentative structure of scientific literature to improve information access

机译:利用科学文献的论证结构改善信息获取

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MEDLINE/PubMed contains structured abstracts that can provide argumentative labels. Selection of abstract sentences based on the argumentative label has shown to improve the performance of information retrieval tasks. These abstracts make up less than one quarter of all the abstracts in MEDLINE/PubMed, so it is worthwhile to learn how to automatically label the non-structured ones. We have compared several machine learning algorithms trained on structured abstracts to identify argumentative labels. We have performed an intrinsic evaluation on predicting argumentative labels for non-structured abstracts and an extrinsic evaluation to predict argumentative labels on abstracts relevant to Gene Reference Into Function (GeneRIF) indexing. Intrinsic evaluation shows that argumentative labels can be assigned effectively to structured abstracts. Algorithms that model the argumentative structure seem to perform better than other algorithms. Extrinsic results show that assigning argumentative labels to non-structured abstracts improves the performance on GeneRIF indexing. On the other hand, the algorithms that model the argumentative structure of the abstracts obtain lower performance in the extrinsic evaluation.
机译:MEDLINE / PubMed包含可以提供论据标签的结构化摘要。基于论据标签的抽象句子选择已显示出可以提高信息检索任务的性能。这些摘要仅占MEDLINE / PubMed中所有摘要的不到四分之一,因此值得学习如何自动标记非结构化摘要。我们比较了几种在结构化摘要上训练的机器学习算法,以识别论据标签。我们已经对非结构化摘要的预测性标签进行了内在评估,并针对与基因参考功能(GeneRIF)索引相关的摘要进行了非预期性评估,从而预测了争议性标签。内在评价表明,论据标签可以有效地分配给结构化摘要。建模自变量结构的算法似乎比其他算法表现更好。外在结果表明,将论证标签分配给非结构化摘要可以提高GeneRIF索引的性能。另一方面,对摘要的论证结构进行建模的算法在外部评估中获得较低的性能。

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