learning objects and/or links allowing acquisition of
the course. The learner will accomplish the first
home-work and test, make self-assessment and
assess ePortfolio group members’ homework which
will include marking of required assessment criteria
and formulating an opinion in a form of constructive
recommendation. Based on these critical thinking
notes the learner will reflect and decide whether
peers’ suggestions are useful or not. This decision
may lead to further homework improvement and
creativity actions. Improved work again will be
input into the system and exposed for analysing and
assessment by ePortfolio group participants once
more. The student will be able also do not take any
homework improvement actions if he/she concludes
that ePortfolio system group members’ remarks are
not constructive and useful. In both cases after
completion of the first theme the next course module
will open.
Test results and competence assessments data
further will be assembled and analysed in order to
state the value of gained competences. Depending
on achieved competence level appropriate learning
object code will be generated; and the learner will
receive necessary learning objects with assigned
codes. Initial competence assessment is essential.
Processes, such as an assignment of the competence
correlative codes to the learning objects and the
assignment of the learning objects’ self-correction
rates, play significant role in ePortfolio system’s AI
decision making process. They allow finding the
most suitable learning path in specific case.
3 CONCLUSIONS
Created collaborative ePortfolio system prototype
verified our expectations regarding system’s positive
impact on learning outcomes. Activities within
ePortfolio system have direct correlations with
students’ exam results and increased level of their
competencies. Students are encouraged reflect and
think critically. Their creativeness grows by virtue
of active participation in collaborative activities
within ePortfolio system.
On the other hand, an analysis of students’ self-
assessments within university’s study portal
“ORTUS” displayed learners’ inability to make self-
assessments by objective considerations: many
students had a lack of confidence, and, as a result,
their initial self-assessment marks were far from real
competence levels. It took time to get some
confidence. Hardworking students enabled steady
progress, which allowed them to acquire required
competences and achieve remarkable final exam
results. Other students overleapt themselves. Starting
from the second course module they made
corrections in self-assessment questionnaires.
Activities within ePortfolio system influenced more
precise adjustment of these changes.
Proposed artificial intelligence methods and
tools to be embedded into ePortfolio system might
look promising. Both students and teachers might
gain by its use. There will be further considerations,
developments and adjustments (creation of system
modules, generating competence correlative codes to
the learning objects, etc.) needed to build up the new
generation ePortfolio system – smart ePortfolios.
ACKNOWLEDGEMENTS
The travel costs and participation fee to conference
was supported by the European Regional
Development Fund project «Development of
international cooperation projects and capacity in
science and technology Riga Technical University»,
Nr. 2DP/2.1.1.2.0/10/APIA/VIAA/003.
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