Figure 2: Modularization effects on query reformulation.
In the first scenario, documents are retrieved via
queries proposed from the INEX (INEX, 2010)
topics without performing any query reformulation.
The second scenario consists on reformulating the
queries by means of the input ontologies provided
by INEX. The third scenario consists on
reformulating queries using concepts of the same
module than the queried concept. The fourth
scenario consists on reformulating queries using
concepts related to the queried concept in other
modules (these relationships are obtained in the third
step of the proposed approach). In each scenario, the
amount of implicit and explicit knowledge
considered during the query reformulation increases.
5 CONCLUSIONS
The challenge addressed in this paper is to propose
an approach to improve query reformulation based
on ontology modularization. Indeed, the use of
ontological modules created by means of case-based
reasoning has improved the relevance of results
(Elloumi et al., 2010). Given that the approaches of
modularization of ontologies are based mainly on
the structure of the ontology, the resulting modules
only rely on explicitly modelled relationships. In
order to consider as much explicit and implicit
knowledge between modules, we propose to
estimate concept relatedness from term co-
occurrence in the Web. As a result, better precision
is achieved by query reformulation tasks relying on
these better structured modules.
ACKNOWLEDGEMENTS
This work has been supported by the Spanish-
Tunisian AECID project A/030058/10, “A
framework for the integration of Ontology Learning
and Semantic Search”.
REFERENCES
Bao J., Slutzki G., and Honavar V., «A Semantic
Importing Approach to Knowledge Reuse from
Multiple Ontologies». In Proceedings of the Twenty-
Second AAAI Conference on Artificial Intelligence,
July 22-26, 2007, Vancouver, British Columbia,
Canada, AAAI Press, 2007, p. 1304–1309, 2007.
Elloumi-Chaabene M., Ben Mustapha N., Baazaoui-Zghal
H., Moreno A. and Sánchez D. «Evolutive content-
based search system- Semantic Search System based
on Case-based-Reasoning and Ontology Enrichment».
In Proceedings of the International Conference on
Knowledge Discovery and Information Retrieval,
2010, p. 24-34.
Henriksson J., Assmann U., Johannes J., and Zschaler S.,
«Reuseware - Adding modularity to your language of
choice». In Proceedings of Technology of Object-
Oriented Languages and Systems Europe 2007,
Zurich, Switzerland (24th–27th June 2007), 2007.
Jarrar M., Towards Methodological Principles for
Ontology Engineering. PhD thesis, Vrije Universiteit
Brussel, 2005.
Mitra P. and Wiederhold G., «An Ontology-Composition
Algebra. International Handbooks on Information
Systems. Springer-Verlag, handbook on ontologies
edition», pages 93-117, 2004.
Newman, M. E. J. A measure of Betweenness Centrality
based on Random Walks. In Social Networks, 27,
pp. 39–54, 2005.
Stuckenschmidt H. et al. (Eds.): Modular Ontologies,
LNCS 5445, pp. 321–347, 2009.
INEX, Overview of the INEX 2010 Ad Hoc Track, http://
staff.science.uva.nl/~kamps/publications/2010/arvo:ov
er10.pdf, 2010.
0
0,1
0,2
0,3
0,4
0,5
0,6
0,7
0,8
0,9
1
5 10 15 20 30 100 200
Precision rate
Number of documents
Modularization effects on query reformulation
Scenario1 Scenario2 Scenario3 Scenario4
ICSOFT 2011 - 6th International Conference on Software and Data Technologies
308