Knowledge graphs have emerged as an effective tool for managing and standardizing semistructured domain knowledge in a human- and machine-interpretable way. In terms of graph-based domain applications, such as embeddings and graph neural networks, current research is increasingly taking into account the time-related evolution of the information encoded within a graph. Algorithms and models for stationary and static knowledge graphs are extended to make them accessible for time-aware domains, where time-awareness can be interpreted in different ways. In particular, a distinction needs to be made between the validity period and the traceability of facts as objectives of time-related knowledge graph extensions. In this context, terms and definitions such as dynamic and temporal are often used inconsistently or interchangeably in the literature. Therefore, with this paper we aim to provide a short but well-defined overview of time-aware knowledge graph extensions and thus faciliate future research in this field as well.
翻译:知识图表已成为以人类和机器解释方式管理和规范半结构化域知识的有效工具,在嵌入和图形神经网络等基于图形的域应用方面,目前的研究越来越多地考虑到在图内编码的信息与时间有关的演变情况;固定和静态知识图表的算法和模型得到扩展,使之可用于时间认知领域,可以以不同方式解释时间意识,特别是需要区分作为时间相关知识图扩展目标的有效期和事实可追溯性,在这方面,动态和时间等术语和定义在文献中往往使用不一致或互换。因此,与本文件相比,我们的目的是提供时间认知图扩展的简短但定义明确的概览,从而也使该领域的未来研究更加精细。