Knowledge graph technology is considered a powerful and semantically enabled solution to link entities, allowing users to derive new knowledge by reasoning data according to various types of reasoning rules. However, in building such a knowledge graph, events modeling, such as that of disasters, is often limited to single, isolated events. The linkages among cascading events are often missing in existing knowledge graphs. This paper introduces our GeoAI (Geospatial Artificial Intelligence) solutions to identify causality among events, in particular, disaster events, based on a set of spatially and temporally-enabled semantic rules. Through a use case of causal disaster events modeling, we demonstrated how these defined rules, including theme-based identification of correlated events, spatiotemporal co-occurrence constraint, and text mining of event metadata, enable the automatic extraction of causal relationships between different events. Our solution enriches the event knowledge base and allows for the exploration of linked cascading events in large knowledge graphs, therefore empowering knowledge query and discovery.
翻译:人们认为,知识图表技术是连接实体的强大和具有语义功能的解决方案,使用户能够根据各种推理规则通过推理数据获取新知识。然而,在建立这种知识图表时,灾害等事件模型往往局限于单一的孤立事件。现有知识图表中往往缺少连锁事件之间的联系。本文件介绍了我们的地球空间人工智能(GeoAID)解决方案,以根据一套空间和时间驱动的语义规则确定事件之间的因果关系,特别是灾害事件。通过使用因果灾害事件模型,我们展示了这些定义的规则,包括以主题为基础确定相关事件、空间共生限制和事件元数据的文本挖掘,使得不同事件之间的因果关系自动提取。我们的解决方案丰富了事件的知识基础,并允许在大型知识图表中探索相关含岩层事件,从而增强知识查询和发现能力。