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Spatial signatures for geographic feature types: examining gazetteer ontologies using spatial statistics

机译:地理特征类型的空间签名:使用空间统计数据检查地名词典本体

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Digital gazetteers play a key role in modern information systems and infrastructures. They facilitate (spatial) search, deliver contextual information to recommended systems, enrich textual information with geographical references, and provide stable identifiers to interlink actors, events, and objects by the places they interact with. Hence, it is unsurprising that gazetteers, such as GeoNames, are among the most densely interlinked hubs on the Web of Linked Data. A wide variety of digital gazetteers have been developed over the years to serve different communities and needs. These gazetteers differ in their overall coverage, underlying data sources, provided functionality, and geographic feature type ontologies. Consequently, place types that share a common name may differ substantially between gazetteers, whereas types labeled differently may, in fact, specify the same or similar places. This makes data integration and federated queries challenging, if not impossible. To further complicate the situation, most popular and widely adopted geo-ontologies are lightweight and thus under-specific to a degree where their alignment and matching become nothing more than educated guesses. The most promising approach to addressing this problem, and thereby enabling the meaningful integration of gazetteer data across feature types, seems to be a combination of top-down knowledge representation with bottom-up data-driven techniques such as feature engineering and machine learning. In this work, we propose to derive indicative spatial signatures for geographic feature types by using spatial statistics. We discuss how to create such signatures by feature engineering and demonstrate how the signatures can be applied to better understand the differences and commonalities of three major gazetteers, namely DBpedia Places, GeoNames, and TGN.
机译:数字地名词典在现代信息系统和基础设施中起着关键作用。它们有助于(空间)搜索,将上下文信息传递到推荐的系统,使用地理参考来丰富文本信息,并提供稳定的标识符以通过与角色,事件和对象进行交互的位置来相互链接。因此,地名词典(例如GeoNames)成为链接数据网中最紧密互连的枢纽之一就不足为奇了。多年来,已经开发了各种各样的数字地名词典,以满足不同的社区和需求。这些地名词典的整体覆盖范围,基础数据源,提供的功能和地理要素类型本体有所不同。因此,在地名词典之间,具有相同名称的场所类型可能会有很大的不同,而实际上,标记不同的类型可能会指定相同或相似的场所。如果不是不可能的话,这将使数据集成和联合查询具有挑战性。使情况进一步复杂化的是,最流行和广泛采用的地理本体是轻量级的,因此在某种程度上是低等的,它们的对齐和匹配不过是有根据的猜测而已。解决这个问题,从而使地名词典数据跨要素类型实现有意义的集成的最有前途的方法似乎是自上而下的知识表示与自下而上的数据驱动技术(例如要素工程和机器学习)的结合。在这项工作中,我们建议通过使用空间统计来得出地理特征类型的指示性空间特征。我们讨论了如何通过要素工程创建此类签名,并演示了如何应用签名以更好地理解DBpedia Places,GeoNames和TGN这三个主要地名词典的区别和共性。

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