2019
DOI: 10.1007/978-3-030-30793-6_19
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Popularity-Driven Ontology Ranking Using Qualitative Features

Abstract: Efficient ontology reuse is a key factor in the Semantic Web to enable and enhance the interoperability of computing systems. One important aspect of ontology reuse is concerned with ranking most relevant ontologies based on a keyword query. Apart from the semantic match of query and ontology, the state-of-the-art often relies on ontologies' occurrences in the Linked Open Data (LOD) cloud to determine relevance. We observe that ontologies of some application domains, in particular those related to Web of Thing… Show more

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Cited by 3 publications
(7 citation statements)
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“…In TermPicker [38], a dataset is automatically derived from the Linked Open Data (LOD) cloud, however, relevance judgments only indicate whether a certain triple pattern appears in the LOD cloud or not (binary relevance) and it does not contain any judgments for keyword-based queries. Kolbe et al [21] propose a dataset derived from scholarly data, which, however, only considers ontology and no term ranking, is also limited by its size (1,028) and focuses on IoT ontologies.…”
Section: Related Workmentioning
confidence: 99%
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“…In TermPicker [38], a dataset is automatically derived from the Linked Open Data (LOD) cloud, however, relevance judgments only indicate whether a certain triple pattern appears in the LOD cloud or not (binary relevance) and it does not contain any judgments for keyword-based queries. Kolbe et al [21] propose a dataset derived from scholarly data, which, however, only considers ontology and no term ranking, is also limited by its size (1,028) and focuses on IoT ontologies.…”
Section: Related Workmentioning
confidence: 99%
“…Compared to obtaining explicit judgments from human experts, which may contain bias and become outdated, collecting implicit user feedback through logs is cost-efficient and further captures actual, potentially timevarying user preferences [42]. This helps to overcome the problem that the amount of training data in LTR settings is often low [21,40]. However, clicks cannot be used as direct relevance judgments due to user's inherent biases (e.g., position bias), click incompleteness (missing feedback for relevant terms), and noise (a click does not necessarily imply relevance of a term) [ Experimental results Figure 1: Overview of the LOVBench approach.…”
Section: Lovbench Approachmentioning
confidence: 99%
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