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Discovering and Linking Spatio-Temporal Big Linked Data

机译:发现和链接时空大链接数据

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The growing number of spatiotemporal datasets is an essential driver for bio-economy. Interoperability is needed to ensure efficient use of these data and had been addressed by standardization institutions, such as OGC and AIMS. Both of them promote the use of Semantic Web standards (e.g., GeoSPArql) as one pillar for interoperability [1]. A significant challenge to strengthen the utility of Semantic Web approaches is linking. Its central goal in the context of spatiotemporal datasets is the (semi-automatic) discovery of geospatial referents, such as events, areas, and places which are not yet linked or georeferenced. While the linking task is intrinsically challenging, it is especially resource- and time-consuming when processing and linking Semantic Big Data. This paper will demonstrate an approach which improves and automates linking Semantic Big Data and show its potential usage for bio-economy.
机译:时空数据集的不断增长是生物经济的重要推动力。为了确保有效使用这些数据,需要互操作性,OGC和AIMS等标准化机构已经解决了互操作性问题。两者都促进了语义Web标准(例如GeoSPArql)的使用,将其作为互操作性的一个支柱[1]。链接是增强语义Web方法实用性的一项重大挑战。在时空数据集的背景下,其主要目标是(半自动)发现地理空间参照物,例如尚未链接或进行地理参照的事件,区域和地点。尽管链接任务本质上具有挑战性,但在处理和链接语义大数据时特别耗时又费资源。本文将演示一种改进和自动化语义大数据链接的方法,并展示其在生物经济中的潜在用途。

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