esteem). This factor has an influence on the higher
difficulty level that the student is able to reach
without fail in his motivation.
The Rosenberg self-esteem scale (RSES)
evaluates the self-esteem in the university context
(Wolpers et al., 2007). Web-based educational
systems can record student’s system access in log
files.
Theses files provide a basic Internet student
tracking. An open code specification based in
attentionXML, is called Contextualized Metadata
Attention, CAM (Perkins, 1995). It captures user’s
observations (browser information use, Web sites,
news feeds, blogs, etc.)
The system clusters Student’s dataset (data
mining 4) to extract the different types of students
according to their knowledge level and learning
preferences. In this step, the system also looks for
anomalous values that correspond with
learninghandicaps or misunderstandings.
There are different pedagogical methodologies
suggested by several authors. Each of them has a
series of characteristics as regards to the type of
resources, student’s level of participation, student’s
learning involvement, etc. This choice entails a
specific learning route that can be associated (data
mining 5 in Fig. 1b and 2) with a unique student’s
profile.
The Tutor model organizes the units following
an established plan designed by the teacher who
bases his opinion on curriculum’s guidelines.
Materials chosen for each learning route will change
according to their success (voting), student difficulty
level and student pedagogical methodology. LMS
control system assessment and satisfaction is carried
out making a comparison between the student’s
average results during the LMS course and those of
the previous year, without the LMS platform.
On the other hand, a reduction in the subject
desertion rate also denotes the smooth running of the
system.
Finally, if the LMS course is implemented in all
subjects of the Engineering Grade, we can use the
University’s efficiency rate. It is defined as the
proportion between the total number of credits of the
grade syllabus and the total number of credits
enrolled by the student.
4 CASE STUDY
To date, it has been implemented the first part of the
Model proposed. It covers the static student model
analysis, applying data mining techniques, which
provide the type of students.
The initial surveys are facilitated to the students
thanks to open source application called
LimeSurvey. Student’s data is clustered by Fuzzy k-
prototypes algorithm (Ng and Wong, 2002) for
numerical and symbolic data developed in Matlab.
The result of the data mining process is the types
of students’ clusters. Once the clusters are made, by
means of a fuzzy rules algorithm (Nguyen and
Walker, 2000), we can associate each of them to the
pedagogical methodologies and resources’ difficulty
level. With these two factors, we can form the
adaptive and personal unit content sequence called
learning route for each student.
5 CONCLUSIONS
This work has focused on developing a new model
for ITS. The future work will finish the ITS model
implementation in a platform or LMS.
REFERENCES
Ong J. and Ramachandran S. 2003. Intelligent Tutoring
Systems: Using AI to Improve Training Performance
and ROI, Slotter Henke Associates
Felder, R. and Silverman, L. 1988. Learning and Teaching
Styles in Engineering Education. Engineering
Education, 78, Vol. 7, 674-881
Blom, B. S. 1956. Taxonomy of Educational Objectives,
New York: David McKay.
Baldiris, S., Santos, O. C., Barrera, C., Boticario, J. G.,
Vélez, J. and Fabregat, R. 2008. Integration of
Educational Specifications and Standards to Support
Adaptative Learning Scenarios in ADAPTAPlan,
International Journal of Computer & Applications, 5,
Vol. 1, 88-107
González, R., Valle, A., Núñez, J. C. and González-
Pienda, J. A. 1996. Una aproximación teórica al
concepto de metas académicas y su relación con la
motivación escolar, Psicothema, 8, Vol.1, 45-61
Martín-Albo, J., Núñez, J. L. and Grijalvo, F. 2007. The
Rosenberg Self-Esteem Scale: Translation and
Validation in University Students, The Spanish Journal
of Psycology, 10, Vol. 2, 458-467
Wolpers, M., Najjar, J., Verbert, K. and Duval, E. 2007.
Tracking Actual Usage: the Attention Metadata
Approach, Educational Technology & Society, 10,
Vol. 3, 106-121
Perkins, D. 1995. La escuela inteligente, Ed. Gedisa.
Ng M. K. and Wong J. C. 2002. Clustering categorical
data sets using tabu search techniques, Pattern
Recognition, vol. 35, 2783-2790
Nguyen H. T. and Walker E. A. 2000. A first course in
fuzzy logic, Boca Raton (Florida), Chap-man &
Hall/CRC
A NEW FRAMEWORK FOR THE CONTROL OF LMS IN ITS
289