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Title Information Extraction meets the Semantic Web: A Survey
Authors Jose L. Martinez-Rodriguez, Aidan Hogan, Ivan Lopez-Arevalo
Publication date February 2020
Abstract We provide a comprehensive survey of the research
literature that
applies Information Extraction techniques in a Semantic Web setting. Works
in the intersection of these two areas can be seen from two overlapping
perspectives: using Semantic Web resources
(languages/ontologies/knowledge-bases/tools) to improve Information
Extraction, and/or using Information Extraction to populate the Semantic
Web. In more detail, we focus on the extraction and linking of three
elements: entities, concepts and relations. Extraction involves identifying
(textual) mentions referring to such elements in a given unstructured or
semi-structured input source. Linking involves associating each such mention
with an appropriate disambiguated identifier referring to the same element
in a Semantic Web knowledge-base (or ontology), in some cases creating a new
identifier where necessary. With respect to entities, works involving
(Named) Entity Recognition, Entity Disambiguation, Entity Linking, etc. in
the context of the Semantic Web are considered. With respect to concepts,
works involving Terminology Extraction, Keyword Extraction, Topic Modeling,
Topic Labeling, etc., in the context of the Semantic Web are considered.
Finally, with respect to relations, works involving Relation Extraction in
the context of the Semantic Web are considered. The focus of the majority of
the survey is on works applied to unstructured sources (text in natural
language); however, we also provide an overview of works that develop custom
techniques adapted for semi-structured inputs, namely markup documents and
web tables.
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Pages 255-335
Volume 11
Journal name Semantic Web
Publisher IOS Press (Amsterdam, The Netherlands)
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