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Content-Based Geospatial Schema Matching Using Semi-supervised Geosemantic Clustering and Hierarchy

机译:基于内容的地理空间模式匹配使用半监控的地质群集和层次结构

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The problem of semantic similarity across heterogeneous geospatial data sources continues to attract interest. Semantic similarity across data sources typically involves 1:1 matching of attributes and their instances between tables. Using clustering methods, three distinct challenges remain unaddressed. First, many clustering algorithms rely only on one instance property. Second, a consistent score for an attribute match is not produced. Finally, hierarchical relationships between the data are not considered. To address these, we introduce GeoSim, a tool for determining the semantic similarity between geospatial schemas. GeoSim consists of GeoSimG and GeoSimH. GeoSimG derives clusters from attribute instances based on their geographic and semantic properties. It examines attribute instances in the clusters to calculate a consistent semantic similarity score through entropy-based distribution (EBD). GeoSimH also captures hierarchical relationships between compared tables and attributes. Results from experiments involving multi-jurisdictional geospatial datasets show that GeoSim outperforms several popular semantic similarity approaches.
机译:异构地理空间数据源的语义相似性的问题继续吸引兴趣。跨数据源的语义相似性通常涉及1:1属性匹配及其表之间的实例。使用聚类方法,三个不同的挑战仍未解决。首先,许多聚类算法仅依赖于一个实例属性。其次,不会产生一个属性匹配的一致分数。最后,不考虑数据之间的分层关系。为了解决这些问题,我们介绍了Geosim,一种用于确定地理空间模式之间的语义相似性的工具。 Geosim由Geosimg和Geosimh组成。 Geosimg基于其地理和语义属性从属性实例派生群集。它检查群集中的属性实例以通过基于熵的分布(EBD)计算一致的语义相似度分数。 Geosimh还捕获了比较表和属性之间的分层关系。涉及多辖区地理空间数据集的实验结果表明,Geosim优于几种流行的语义相似性方法。

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