Identifying and Improving Dataset References in Social Sciences Full Texts

Behnam Ghavimi, Philipp Mayr, S. Vahdati, C. Lange
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引用次数: 14

Abstract

Scientific full text papers are usually stored in separate places than their underlying research datasets. Authors typically make references to datasets by mentioning them for example by using their titles and the year of publication. However, in most cases explicit links that would provide readers with direct access to referenced datasets are missing. Manually detecting references to datasets in papers is time consuming and requires an expert in the domain of the paper. In order to make explicit all links to datasets in papers that have been published already, we suggest and evaluate a semi-automatic approach for finding references to datasets in social sciences papers. Our approach does not need a corpus of papers (no cold start problem) and it performs well on a small test corpus (gold standard). Our approach achieved an F-measure of 0.84 for identifying references in full texts and an F-measure of 0.83 for finding correct matches of detected references in the da|ra dataset registry.
识别和改进社会科学全文数据集引用
科学全文论文通常存储在与其基础研究数据集不同的地方。作者通常通过提到数据集来引用它们,例如通过使用它们的标题和出版年份。然而,在大多数情况下,为读者提供直接访问引用数据集的显式链接是缺失的。手动检测论文中对数据集的引用是耗时的,并且需要论文领域的专家。为了明确所有已发表论文中的数据集链接,我们建议并评估一种半自动方法,用于在社会科学论文中查找对数据集的引用。我们的方法不需要一个论文的语料库(没有冷启动问题),它在一个小的测试语料库(黄金标准)上表现良好。我们的方法在全文中识别参考文献的f值为0.84,在da|ra数据集注册表中找到检测到的参考文献的正确匹配的f值为0.83。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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