Knowledge Graphs and their Role in the Knowledge Engineering of the 21st Century (Dagstuhl Seminar 22372)

Paul Groth, E. Simperl, M. Erp, Denny Vrandečić
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引用次数: 5

Abstract

This report documents the programme and outcomes of Dagstuhl Seminar 22372 “Knowledge Graphs and their Role in the Knowledge Engineering of the 21st Century” held in September 2022. The seminar aimed to gain a better understanding of the way knowledge graphs are created, maintained, and used today, and identify research challenges throughout the knowledge engineering life cycle, including tasks such as modelling, representation, reasoning, and evolution. The participants identified directions of research to answer these challenges, which will form the basis for new methodologies, methods, and tools, applicable to varied AI systems in which knowledge graphs are used, for instance, in natural language processing, or in information retrieval. The seminar brought together a snapshot of the knowledge engineering and adjacent communities, including leading experts, academics, practitioners, and rising stars in those fields. It fulfilled its aims – the participants took inventory of existing and emerging solutions, discussed open problems and practical challenges, and identified ample opportunities for novel research, technology transfer, and inter-disciplinary collaborations. Among the topics of discussion were: designing engineering methodologies for knowledge graphs, integrating large language models and structured data into knowledge engineering pipelines, neural methods for knowledge engineering, responsible use of AI in knowledge graph construction, other forms of knowledge representations, and generating user and developer buy-in. Besides a range of joint publications, hackathons, and project proposals, the participants suggested joint activities with other scientific communities, in particular those working on large language models, generative AI, FAccT (fairness, accountability, transparency), and human-AI interaction. The discussions were captured in visual summaries thanks to Catherine Allan – you can find more about her work at https://www.catherineallan.co.uk/. The summaries are arrayed throughout this report. Lastly, knowledge about the seminar is captured in Wikidata at https: //www.wikidata.org/wiki/Q113961931 Seminar September 12–14, 2022 – http://www.dagstuhl.de/22372 2012 ACM Subject Classification Computing methodologies → Knowledge representation and reasoning; Computing methodologies → Natural language processing; Computing methodologies → Machine learning; Information systems → Information retrieval; Computing methodologies → Ontology engineering; Computing methodologies → Reasoning about belief and knowledge; Human-centered computing → Collaborative and social computing theory, concepts and paradigms
知识图谱及其在21世纪知识工程中的作用(Dagstuhl Seminar 22372)
本报告记录了2022年9月举行的达格斯图尔研讨会22372“知识图谱及其在21世纪知识工程中的作用”的计划和成果。研讨会旨在更好地理解知识图的创建、维护和使用方式,并确定整个知识工程生命周期的研究挑战,包括建模、表示、推理和进化等任务。与会者确定了应对这些挑战的研究方向,这将形成新的方法论、方法和工具的基础,适用于各种使用知识图的人工智能系统,例如,在自然语言处理或信息检索中。研讨会汇集了知识工程和相关社区的快照,包括这些领域的主要专家、学者、实践者和新星。它实现了它的目标——与会者盘点了现有的和新兴的解决方案,讨论了开放的问题和实际挑战,并确定了大量的新研究、技术转让和跨学科合作的机会。讨论的主题包括:设计知识图的工程方法,将大型语言模型和结构化数据集成到知识工程管道中,知识工程的神经方法,在知识图构建中负责任地使用AI,其他形式的知识表示,以及产生用户和开发人员的支持。除了一系列联合出版物、黑客马拉松和项目提案外,与会者还建议与其他科学界开展联合活动,特别是那些致力于大型语言模型、生成式人工智能、FAccT(公平性、问责制、透明度)和人类与人工智能互动的科学界。感谢Catherine Allan将这些讨论以视觉摘要的形式记录下来——你可以在https://www.catherineallan.co.uk/上找到更多关于她的工作。摘要排列在本报告的各处。最后,通过https: //www.wikidata.org/wiki/Q113961931 seminar September 12-14, 2022 - http://www.dagstuhl.de/22372 2012 ACM主题分类计算方法→知识表示和推理;计算方法→自然语言处理;计算方法→机器学习;信息系统→信息检索;计算方法→本体工程;计算方法→关于信念和知识的推理;以人为中心的计算→协作和社会计算理论、概念和范例
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