Coupling semantic and statistical techniques for dynamically enriching
web ontologies
- URL: http://arxiv.org/abs/2004.11081v1
- Date: Thu, 23 Apr 2020 11:21:30 GMT
- Title: Coupling semantic and statistical techniques for dynamically enriching
web ontologies
- Authors: Mohammed Maree, Mohammed Belkhatir
- Abstract summary: We propose an automatic coupled statistical/semantic framework for dynamically enriching large-scale generic from the World Wide Web.
The benefits of our approach are: (i) proposing the dynamic enrichment of large-scale semantic patterns with missing background knowledge, and thus, enabling the reuse of such knowledge.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: With the development of the Semantic Web technology, the use of ontologies to
store and retrieve information covering several domains has increased. However,
very few ontologies are able to cope with the ever-growing need of frequently
updated semantic information or specific user requirements in specialized
domains. As a result, a critical issue is related to the unavailability of
relational information between concepts, also coined missing background
knowledge. One solution to address this issue relies on the manual enrichment
of ontologies by domain experts which is however a time consuming and costly
process, hence the need for dynamic ontology enrichment. In this paper we
present an automatic coupled statistical/semantic framework for dynamically
enriching large-scale generic ontologies from the World Wide Web. Using the
massive amount of information encoded in texts on the Web as a corpus, missing
background knowledge can therefore be discovered through a combination of
semantic relatedness measures and pattern acquisition techniques and
subsequently exploited. The benefits of our approach are: (i) proposing the
dynamic enrichment of large-scale generic ontologies with missing background
knowledge, and thus, enabling the reuse of such knowledge, (ii) dealing with
the issue of costly ontological manual enrichment by domain experts.
Experimental results in a precision-based evaluation setting demonstrate the
effectiveness of the proposed techniques.
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