to be manually defined by the authors of the learning
materials in the work of Dicheva and Aroyo.
6 CONCLUSIONS AND FUTURE
WORK
Online discussion forums are one of the main asyn-
chronous communication means and repositories of
user generated content over the Internet. Learning
management systems (LMSs), such as Moodle, use
forums to support interaction and collaboration be-
tween students and students-to-teachers. Discussions
taken place in a forum at some time represent a source
of information for users accessing the forum after-
wards. However, the effectiveness of a forum as a
source of information for its users, additionally to be
closely related to its richness in content, is also in-
fluenced by the way its contents are organized made
searchable.
In this paper we presented an approach and a plu-
gin for the Moodle LMS that enhances content navi-
gation and information search in online discussion fo-
rums with a topic-driven navigational paradigm. The
approach enables the automatic recovery of a lattice
of discussion topics from the forum content, and the
introduction of an additional navigation structure and
graphical user interface which enable navigating and
searching forum contents by topics of discussion.
While the approach has proven correctness for
both the identified topics and the document-to-topics
assignment (Cerulo and Distante, 2013), in this paper
we have also shown with a case study that the addi-
tional navigation structure significantly improves the
search of information stored in forum discussions.
In the future we aim to apply our approach in the
context of social networks, in order to explore how
it could improve social organization and user interac-
tion. As a matter of fact, social networks are increas-
ingly used in e-learning as side means for connecting
students and teachers.
REFERENCES
Baeza-Yates, R. A. and Ribeiro-Neto, B. (1999). Mod-
ern Information Retrieval. Addison-Wesley Longman
Publishing Co., Inc., Boston, MA, USA.
Bakalov, A., McCallum, A., Wallach, H. M., and Mimno,
D. M. (2012). Topic models for taxonomies. In
Proceedings of the 12th ACM/IEEE-CS Joint Con-
ference on Digital Libraries, JCDL ’12, Washington,
DC, USA, June 10-14, 2012, pages 237–240.
Birkhoff, G. (1967). Lattice theory. In Colloquium Publi-
cations, volume 25. Amer. Math. Soc., 3. edition.
Blei, D. M. (2011). Introduction to probabilistic topic mod-
els. Communications of the ACM.
Castro, F., Nebot, A., and Mugica, F. (2007a). Extraction of
logical rules to describe students’ learning behavior.
In Proceedings of the sixth conference on IASTED In-
ternational Conference Web-Based Education - Vol-
ume 2, WBED’07, pages 164–169, Anaheim, CA,
USA. ACTA Press.
Castro, F., Vellido, A., Nebot, A., and Mugica, F. (2007b).
Applying data mining techniques to e-learning prob-
lems. In Jain, L., Tedman, R., and Tedman, D., edi-
tors, Evolution of Teaching and Learning Paradigms
in Intelligent Environment, volume 62 of Studies in
Computational Intelligence, pages 183–221. Springer
Berlin Heidelberg.
Cerulo, L. and Distante, D. (2013). Topic-driven semi-
automatic reorganization of online discussion forums:
A case study in an e-learning context. In Global
Engineering Education Conference (EDUCON), 2013
IEEE, pages 303–310.
Dicheva, D. and Dichev, C. (2006). Tm4l: Creating and
browsing educational topic maps. British Journal of
Educational Technology, 37(3):391–404.
dos Santos Machado, L. and Becker, K. (2003). Distance
education: A web usage mining case study for the
evaluation of learning sites. In 2003 IEEE Interna-
tional Conference on Advanced Learning Technolo-
gies (ICALT 2003), 9-11 July 2003, Athens, Greece,
pages 360–361. IEEE Computer Society.
Ganter, B. and Wille, R. (1999). Formal concept analysis:
mathematical foundations. Springer.
Ghenname, M., Ajhoun, R., Gravier, C., and Subercaze, J.
(2012). Combining the semantic and the social web
for intelligent learning systems. In Global Engineer-
ing Education Conference (EDUCON), 2012 IEEE,
pages 1 –6.
Gruen, T. W., Osmonbekov, T., and Czaplewski, A. J.
(2006). eWOM: The impact of customer-to-customer
online know-how exchange on customer value and
loyalty. Journal of Business Research, 59:449456.
Hanna, M. (2004). Data Mining in the e-Learning Domain.
Campus-Wide Information Systems, 21(1):29–34.
Hogo, M. A. (2010). Evaluation of e-learning systems based
on fuzzy clustering models and statistical tools. Ex-
pert Syst. Appl., 37(10):6891–6903.
Hrastinski, S. (2008). What is online learner participa-
tion? a literature review. Computers & Education,
51(4):1755 – 1765.
Jakobsone, A., Kulmane, V., and Cakula, S. (2012). Struc-
turization of information for group work in an online
environment. In Global Engineering Education Con-
ference (EDUCON), 2012 IEEE, pages 1 –7.
Li, Q., Wang, J., Chen, Y. P., and Lin, Z. (2010). User
comments for news recommendation in forum-based
social media. Information Sciences, 180:49294939.
Martin, A. and Leon, C. (2012). An intelligent e-learning
scenario for knowledge retrieval. In Global Engineer-
ing Education Conference (EDUCON), 2012 IEEE,
pages 1 –6.
Meila, M. (2003). Comparing clusterings by the variation of
information. In Computational Learning Theory and
EnhancingOnlineDiscussionForumswithaTopic-drivenNavigationalParadigm-APluginfortheMoodleLearning
ManagementSystem
105