hours). We are aware that the process is subjective
and a different panel of students or users can express
different opinions about the e-Learning platforms. We
recall that this data collection aims at illustrating the
use of our approach. The values obtained for each cri-
terion in its category are summarized in Table 8. The
application of our approach on the set of considered
systems is performed as follows.
1. for each category in Table 4 we calculate values
of pre f Min and pre f Max for all functionalities
based on Definition 3. In Table 5, we display the
results obtained by applying our approach on the
category “Communication Tools” for our consid-
ered set of e-learning platforms.
2. for all categories in Table 8 we calculate values of
pre f MaxMin and pre f MinMax. Results of both
calculus are displayed in Table 6 and 7 respec-
tively.
According to Table 6, we obtain the following ranking
over the set of e-learning system considered.
1. Claroline, Dokeos, eFront, Ganesha and Sakai.
2. Ilias, Open ELMS, Olat and AnaXagora.
According to Table 7, we obtain the following
ranking over the set of e-learning system considered.
1. Sakai
2. Claroline, Dokeos and Olat
3. eFront, ILIAS, Open ELMS, Ganesha and
AnaXagora
Finally, users can make a choice based on either
pre f MaxMin or pre f MinMax operators or can com-
bine the result returned by both. For instance, in
our illustrative example, Claroline, Dokeos, eFront,
Ganesha and Sakai are all optimal platforms accord-
ing to pre f MaxMin operator, whereas Sakai is the op-
timal one according to pre f MinMax operator. But,
we can notice that Sakai performs better since it is
optimal according to both operators.
4 CONCLUSION AND FUTURE
WORK
In this paper, we have presented an e-Learning sys-
tems evaluation approach based on a symbolic set of
value, a total order preference relation and compar-
ison operators. To describe e-Learning system, we
have used categories, each of which defines some cri-
terion of well-known properties of these systems. We
apply our approach on a set of open source e-Learning
systems for which you have gathered through small
surveys their evaluation on the considered criteria.
The proposed approach assesses the quality of an e-
Learning system amongst a set of e-Learning plat-
forms by considering a maximum possible satisfac-
tion and/or a minimum guaranteed satisfaction. Once
this value is obtained, it becomes easy to rank the set
of e-learning systems considered from the most to the
least satisfactory, and to deliver to the user the one or
several optimal systems.
Our approach brings a solution to the problem of
choosing a system according to well-defined criteria.
It is still to perform a larger survey to obtain values as
accurate as possible for the criteria. It is also worthy
to consider user profiles when performing surveys in
such a way that we obtain different values for different
profiles. A profile can be defined over a population of
users based on their interests and training objectives.
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