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Title: (Personalization of learning material in web-based education)


1
(Personalization of learning material in
web-based education)
Personalisering av læringsinnhold i e-læringskurs
  • Håvard Narvesen 05HMTMT

2
Overview
  • Employer Apropos Internett (Hamar, Norway)
  • Main task Study ways to adapt learning material
    based on individual competence gaps
  • Supervisor Rune Hjelsvold
  • Keywords E-learning, personalization, adaptive
    hypermedia

3
Introduction
What is a Learning Management System (LMS)? What
is the problem with presentation of most
web-based education material today? How can
personalization improve web-based education?
4
Problem area
One-size-fits-all-scenario
Personalized material
5
Why personalize learning material?
  • It makes web-based courses more relevant to each
    learner.
  • By making e-learning courses adaptable to each
    learners pre-knowledge, learners may start the
    same course at different entry levels.
  • If the learning material doesnt feel relevant,
    then the learners motivation weakens. Audun
    Gjevre, Apropos Internett

6
Research questions
  • S1 Hvilke egenskaper bør et nettbasert
    læringssystem inneha for å støtte personalisering
    av læringsinnhold basert på hver kursdeltakers
    kompetansegap?
  • S2 Hvilke er de største tekniske utfordringene
    ved implementasjon av et adaptivt e-læringskurs,
    der innhold tilpasses basert på kursdeltakerens
    forhåndskunnskaper?
  • S3 Hvordan oppfatter kursdeltakerne
    automatisert pretesting?

7
Method
  • S1 A literature study and an interview with an
    expert was used to understand relevant concepts
    and point out key characteristics of educational
    adaptive learning systems.
  • S2 A prototype of a system, capable of
    personalizing learning material, was build in
    order to bring out major technical difficulties.
  • S3 An experiment was carried out to get feedback
    from a set of learners on implemented
    personalization techniques. Qualitative and
    quantitative methods were used to gather data.

8
Some results Study of characteristics (S1)
  • By pre-testing each users knowledge prior to the
    web-based course, it is possible to unveil human
    competence gaps, and let them influence the
    personalization.
  • The pre-test cannot be too resource-demanding
    neither for teachers or learners.
  • Computer agents are commonly used to support
    learners in modern web-based educational systems.

9
Some results Technical challenges (S2)
  • Describing and dividing learning material suited
    for personalization. The SCORM standard is not
    perfectly suited for advanced personalization.
    (Abdullah et al., 2003)
  • Building automated pre-tests, and then evaluate
    the results
  • Automatically adapt learning material to each
    learner based on results from the pre-test and
    the learning goals. (Knowledge based)
  • Implementation of agents for supporting
    adaptation ? one learner many teachers

10
The experiment
  • A test group of 11 learners used the prototype to
    carry out a web-based course.
  • The course concerned computer viruses.
  • A simple pre-test determined the available
    learning material.

11
  • The structure of the course
  • The pre-test was organized as follows
  • This means that the pre-test consists of the
    users pre-knowledge for each of the main topics
    in the course. The pre-knowledge was included as
    a part of a user model.

12
Some results Experiment (S3)
  • All participants agreed to spend 5 or more of
    the total time a course demands in order to
    personalize a course (in the future).
  • Only 2 of the 11 learners fully agreed with the
    technique for filtering learning material
    implemented in the prototype. These results
    confirms conclusions from other researchers that
    creating a system that can predict every learners
    competence gap with 100 accuracy, is
    unrealistic.
  • Also, the learners view on Personalization in
    e-learning, how they like to be tested, how they
    liked link-personalization and more.

13
General conclusion (preliminary)
  • The experiment in this work, and other studies,
    suggest that a pre-test should be used to decide
    which learners that need (or not need) extra
    attention, rather than entirely delimit the
    course material.
  • Most test-learners did not like that the system
    totally decided what they should read and not.
    Based on information from the learners, the
    pre-test results should rather be used to make a
    suggestion of what to prioritize in the
    e-learning course.

14
  • Thank you for your attention!
  • Any comments or questions?
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