论文标题
知识图策划:一个实用的框架
Knowledge Graph Curation: A Practical Framework
论文作者
论文摘要
知识图(KGS)已证明对于个人助理,提问系统和搜索引擎等应用非常重要。因此,确保其高质量至关重要。但是,公斤不可避免地包含错误,重复和缺失的值,这可能会阻碍其在业务应用程序中的收养和实用性,因为它们没有策划,例如,低质量的kgs产生在其顶部建立的低质量应用程序。在本视觉论文中,我们提出了一个实用的知识图策划框架,以提高KG的质量。首先,我们定义了一组用于评估KGS状态的质量指标,其次,我们将KGS的验证和验证描述为清洁任务,第三,我们提出了重复的检测和知识融合策略以丰富KGS。此外,我们为策划KGS的更好的建筑提供了见解和方向。
Knowledge Graphs (KGs) have shown to be very important for applications such as personal assistants, question-answering systems, and search engines. Therefore, it is crucial to ensure their high quality. However, KGs inevitably contain errors, duplicates, and missing values, which may hinder their adoption and utility in business applications, as they are not curated, e.g., low-quality KGs produce low-quality applications that are built on top of them. In this vision paper, we propose a practical knowledge graph curation framework for improving the quality of KGs. First, we define a set of quality metrics for assessing the status of KGs, Second, we describe the verification and validation of KGs as cleaning tasks, Third, we present duplicate detection and knowledge fusion strategies for enriching KGs. Furthermore, we give insights and directions toward a better architecture for curating KGs.