This study presents insights from interviews with nineteen Knowledge Graph (KG) practitioners who work in both enterprise and academic settings on a wide variety of use cases. Through this study, we identify critical challenges experienced by KG practitioners when creating, exploring, and analyzing KGs that could be alleviated through visualization design. Our findings reveal three major personas among KG practitioners - KG Builders, Analysts, and Consumers - each of whom have their own distinct expertise and needs. We discover that KG Builders would benefit from schema enforcers, while KG Analysts need customizable query builders that provide interim query results. For KG Consumers, we identify a lack of efficacy for node-link diagrams, and the need for tailored domain-specific visualizations to promote KG adoption and comprehension. Lastly, we find that implementing KGs effectively in practice requires both technical and social solutions that are not addressed with current tools, technologies, and collaborative workflows. From the analysis of our interviews, we distill several visualization research directions to improve KG usability, including knowledge cards that balance digestibility and discoverability, timeline views to track temporal changes, interfaces that support organic discovery, and semantic explanations for AI and machine learning predictions.
翻译:本研究通过对19名知识图谱(KG)从业者进行访谈,揭示了他们在企业和学术领域中开展多种用例时的经验。通过这项研究,我们确定了KG从业者在创建、探索和分析KG时面临的关键挑战,这些挑战可以通过可视化设计得到缓解。研究结果揭示了KG从业者中的三个重要的角色——KG建造者、分析员和用户,他们每个人都有自己独特的专业知识和需求。我们发现,KG建造者将从模式强制执行器中获益,而KG分析员需要提供临时查询结果的可定制查询构建器。对于KG用户,我们发现节点链接图的效果不够好,需要定制的领域特定可视化来促进KG的采纳和理解。最后,我们发现,有效地实现KG在实践中的应用需要当前工具、技术和协作工作流程无法解决的技术和社会解决方案。从访谈分析中,我们总结了几个可视化研究方向,以提高KG的可用性,包括平衡易消化性和可发现性的知识卡片、跟踪时间变化的时间轴视图、支持有机发现的界面和AI和机器学习预测的语义解释。