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A Proposed Approach for Learner Evaluation in an Open Distance Environment
The remote learning evolution and particularly the e-learning permits to more and more people access t o
education. One of the learning fields which are to be developed is the learner evaluation. The accurac y and the pertinence of
the evaluation results can provide information whic h can be very exploitable by the tutor in order to let the latter help the
learner who has some troubles. The evaluation can a lso be exploitable by the learner because it provides a feedback on what
he has really understood. Within this context we ar e interested by two types of cognitive evaluations, the first one concerning
the self-evaluation by questionnaires with multiple choices and the second one concerning the collecti ve work evaluation. For
the first case, the work consists to make the quest ionnaires with multiple choices intelligent, e.g., the questions which will be
asked will progress in function of the learner’s an swers in order to identify the knowledge on which h e has difficulties. In the
second case, we will use a multi-agent system in or der to achieve the evaluation of a group of learners working on the same
project.
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