Publication: Ontological Knowledge Inferring Approach based on Term-Clustering and Intra-Cluster Permutations
Type:
Article
Date
2020-12-10
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Ontological representation of knowledge has the
advantage of being easy to reason with, but ontology
construction with knowledge facts, automatically acquiring
them from open domain text is often challenging. This research
introduces a novel approach to infer new ontological knowledge
in a fully automated manner. Such ontological knowledge can be
utilized in both constructing new ontologies and extending
existing ontologies. Basic level triples that can be extracted from
open domain text are used as the data source for this study. A
simple mechanism has been introduced to convert the triple into
an ontological knowledge fact and such ontological knowledge
facts are further processed to infer new ontological knowledge.
The main focus of this research is to infer new ontological
knowledge using an advanced term-clustering mechanism
followed by an intra-cluster permutation generation task.
Generated permutations are potential to be selected as good
ontological knowledge facts. Inferred ontological knowledge was
tested with inter-rater agreement method with high reliability
and variability. Results demonstrated that, out of 43,103 triples,
this method inferred 127,874 ontological knowledge
(approximately 3 times) of which 66% were estimated to be
effective. Finally, this research contributes a reliable approach
which requires a single pass over the corpus of triples to infer a
large number of ontological knowledge facts that can be used to
construct/extend ontologies.
Description
Keywords
Ontology, Triple, Ontological knowledge, Natural Language Processing (NLP), Clustering, word similarity
