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Matching Research Publications to the United Nations’ Sustainable Development Goals by Multi-Label-Learning with Hierarchical Categories

机译:通过分层分类的多标签学习使研究出版物与联合国的可持续发展目标相匹配

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In 2015 the United Nations proposed the Sustainable Development Goals (SDGs), a set of universal goals for meeting the urgent environmental, political and economic challenges in the world. Universities play an important role to support and contribute to the SDGs mainly through education and research. To evaluate the contributions through research, universities aim at relating their scientific publications to SDGs, and automatically quantify the connectedness of these publications to the detailed targets and the unique indicators under SDGs. In this paper, we apply deep learning techniques to estimate the unknown indicators (third level) and targets (second level) for each publication, and output all its possible goals (first level). Specifically, we first exploit the dependency of categories at different levels (goals, targets, and indicators) to extract the dependent label features. Then we calculate the degree of matching between categories and publications in a bottom-up way and design a hierarchical structure to transfer such matching information level by level until obtaining the predicted SDGs of the publications. This is the first application of a deep learning method on this SDG prediction task and our experiments clearly demonstrate the good performance of our model on this real-world SDGs matching task, the extraction of key information as well as the prediction of potential sub-categories. As auxiliary analysis, we visualize the extraction of key semantic information and the probability of the hierarchical SDG categories.
机译:2015年,联合国提出了可持续发展目标(SDG),这是应对世界上紧迫的环境,政治和经济挑战的一系列普遍目标。大学主要通过教育和研究在支持和促进可持续发展目标方面发挥重要作用。为了通过研究评估贡献,大学致力于将其科学出版物与可持续发展目标相关联,并自动量化这些出版物与可持续发展目标下的详细目标和独特指标之间的联系。在本文中,我们应用深度学习技术来估计每个出版物的未知指标(第三级)和目标(第二级),并输出其所有可能的目标(第一级)。具体来说,我们首先利用类别在不同级别(目标,目标和指标)的依赖性来提取依赖性标签特征。然后,我们以自下而上的方式计算类别和出版物之间的匹配程度,并设计层次结构以逐级传递此类匹配信息,直到获得出版物的预测SDG。这是深度学习方法在此SDG预测任务上的首次应用,我们的实验清楚地证明了我们的模型在此实际SDG匹配任务,关键信息的提取以及潜在子类别的预测方面的良好性能。 。作为辅助分析,我们将关键语义信息的提取和分层SDG类别的概率可视化。

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