The pandemic of COVID-19 has inspired extensive works across different research fields. Existing literature and knowledge platforms on COVID-19 only focus on collecting papers on biology and medicine, neglecting the interdisciplinary efforts, which hurdles knowledge sharing and research collaborations between fields to address the problem. Studying interdisciplinary researches requires effective paper category classification and efficient cross-domain knowledge extraction and integration. In this work, we propose Covidia, COVID-19 interdisciplinary academic knowledge graph to bridge the gap between knowledge of COVID-19 on different domains. We design frameworks based on contrastive learning for disciplinary classification, and propose a new academic knowledge graph scheme for entity extraction, relation classification and ontology management in accordance with interdisciplinary researches. Based on Covidia, we also establish knowledge discovery benchmarks for finding COVID-19 research communities and predicting potential links.
翻译:COVID-19 疫情激发了不同研究领域的广泛研究工作。现有的 COVID-19 文献和知识平台仅关注收集生物学和医学领域的论文,忽视了跨学科的努力,这妨碍了不同领域之间的知识共享和研究合作来解决这个问题。研究跨学科的研究需要有效的论文类型分类和有效的跨领域知识提取和集成。在这项工作中,我们提出了 Covidia,COVID-19 跨学科学术知识图谱,以弥合不同领域 COVID-19 知识之间的差距。我们设计了基于对比学习的框架进行学科分类,并提出了一种新的学术知识图谱方案,用于在跨学科研究中进行实体提取、关系分类和本体管理。基于 Covidia,我们还建立了寻找 COVID-19 研究社区和预测潜在联系的知识发现基准。