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Semantically-Enriched Search Engine for Geoportals: A Case Study with ArcGIS Online

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 نشر من قبل Gengchen Mai
 تاريخ النشر 2020
  مجال البحث الهندسة المعلوماتية
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Many geoportals such as ArcGIS Online are established with the goal of improving geospatial data reusability and achieving intelligent knowledge discovery. However, according to previous research, most of the existing geoportals adopt Lucene-based techniques to achieve their core search functionality, which has a limited ability to capture the users search intentions. To better understand a users search intention, query expansion can be used to enrich the users query by adding semantically similar terms. In the context of geoportals and geographic information retrieval, we advocate the idea of semantically enriching a users query from both geospatial and thematic perspectives. In the geospatial aspect, we propose to enrich a query by using both place partonomy and distance decay. In terms of the thematic aspect, concept expansion and embedding-based document similarity are used to infer the implicit information hidden in a users query. This semantic query expansion 1 2 G. Mai et al. framework is implemented as a semantically-enriched search engine using ArcGIS Online as a case study. A benchmark dataset is constructed to evaluate the proposed framework. Our evaluation results show that the proposed semantic query expansion framework is very effective in capturing a users search intention and significantly outperforms a well-established baseline-Lucenes practical scoring function-with more than 3.0 increments in DCG@K (K=3,5,10).

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