Approaches for the Clustering of Geographic Metadata and the Automatic Detection of Quasi-Spatial Dataset Series

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Abstract

The discrete representation of resources in geospatial catalogues affects their information retrieval performance. The performance could be improved by using automatically generated clusters of related resources, which we name quasi-spatial dataset series. This work evaluates whether a clustering process can create quasi-spatial dataset series using only textual information from metadata elements. We assess the combination of different kinds of text cleaning approaches, word and sentence-embeddings representations (Word2Vec, GloVe, FastText, ELMo, Sentence BERT, and Universal Sentence Encoder), and clustering techniques (K-Means, DBSCAN, OPTICS, and agglomerative clustering) for the task. The results demonstrate that combining word-embeddings representations with an agglomerative-based clustering creates better quasi-spatial dataset series than the other approaches. In addition, we have found that the ELMo representation with agglomerative clustering produces good results without any preprocessing step for text cleaning.

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APA

Lacasta, J., Lopez-Pellicer, F. J., Zarazaga-Soria, J., Béjar, R., & Nogueras-Iso, J. (2022). Approaches for the Clustering of Geographic Metadata and the Automatic Detection of Quasi-Spatial Dataset Series. ISPRS International Journal of Geo-Information, 11(2). https://doi.org/10.3390/ijgi11020087

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