Interpreting discovered patterns in terms of ontology concepts

Bashar, Md Abul, Li, Yuefeng, Shen, Yan, & Albathan, Mubarak (2014) Interpreting discovered patterns in terms of ontology concepts. In Ślęzak, Dominik, Nguyen, Hung Son, Reformat, Marek, & Santos, Eugene Jr (Eds.) Proceedings of the 2014 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT), IEEE, Warsaw, Poland, pp. 432-437.

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Semantic Web offers many possibilities for future Web technologies. Therefore, it is a need to search for ways that can bring the huge amount of unstructured documents from current Web to Semantic Web automatically. One big challenge in searching for such ways is how to understand patterns by both humans and machine. To address this issue, we present an innovative model which interprets patterns to high level concepts. These concepts can explain the patterns' meanings in a human understandable way while improving the information filtering performance. The model is evaluated by comparing it against one state-of-the-art benchmark model using standard Reuters dataset. The results show that the proposed model is successful. The significance of this model is three fold. It gives a way to interpret text mining output, provides a technique to find concepts relevant to the whole set of patterns which is an essential feature to understand the topic, and to some extent overcomes information mismatch and overload problems of existing models. This model will be very useful for knowledge based applications.

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ID Code: 80083
Item Type: Conference Paper
Refereed: Yes
Additional URLs:
DOI: 10.1109/WI-IAT.2014.67
ISBN: 9781479941438
Divisions: Current > Schools > School of Electrical Engineering & Computer Science
Current > QUT Faculties and Divisions > Science & Engineering Faculty
Copyright Owner: Copyright 2014 by IEEE
Deposited On: 15 Jan 2015 02:40
Last Modified: 16 Jan 2015 00:16

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