how recommender systems in technology-enhanced learning depend on context

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How Recommender Systems in Technology-Enhanced Learning depend on Context Hendrik Drachsler Open University of the Netherlands Nikos Manouselis Greek Research Technology Network

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Presentation at STELLAR - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DE

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Page 1: How Recommender Systems in Technology-Enhanced Learning depend on Context

How Recommender Systems in

Technology-Enhanced Learning

depend on ContextHendrik Drachsler Open University of the Netherlands

Nikos ManouselisGreek ResearchTechnology Network

Page 2: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 2 | November 30, 2009

TEL context

Figure by : Cross, J. (2006). Informal learning: Rediscovering the natural pathways that inspire innovation and performance. San Francisco, CA: Pfeiffer.

Page 3: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 3 | November 30, 2009

Formal learning

Figure by:Cross, J. (2006)

• are learning offers from educational institutions.

• is imbedded into a curriculum or syllabus framework.

• is highly structured.• leads to a specific accreditation.• involves domain experts to guarantee quality.

Page 4: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 4 | November 30, 2009

Formal learning = structured layers

Generic layers within a simplified architecture of an educational AEH(Karampiperis & Sampson, 2005)

Page 5: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 5 | November 30, 2009

Informal learning• content is provide from different sources.

• happens outside formal educational settings (e.g. related to work or leisure time.

• is less structured (in terms of learning goals, study time or learning support).

• does not lead to a certain accreditation.

Figure by:Cross, J. (2006)

Page 6: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 6 | November 30, 2009

Informal learning = emergence

Page 7: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 7 | November 30, 2009

Context variables Formal learning Curriculum (Closed-Corpus) Teacher directed Predefined learning resources, learning goals Maintenance

Informal learning Learning resources from different providers (Open-Corpus)

More self-directed learning goals

Responsible for own learning pace / path

Lack of maintenance

Page 8: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 8 | November 30, 2009

Recommendation approaches

Learning settings, environmental conditions and the task greatly affect the design of systems in TEL.

Learning settings, environmental conditions and the task greatly affect the design of recommender systems in TEL.

Page 9: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 9 | November 30, 2009

Formal recommendation approach

Content Layer

Conceptual Layer

Learning Goal LayerAdaptiveSequencing(top-down)

Page 10: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 10 | November 30, 2009

Informal recommendation approach

Content Layer

Clustering Layer 1..n

Clustering Layer nHierarchicalclustering(bottom-up)

Page 11: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 11 | November 30, 2009

Research question

How can we get the best out of both worlds?

Page 12: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 12 | November 30, 2009

A solution for formal learning

Page 13: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 13 | November 30, 2009

• 100 user (hopefully some more after today )

• 20000 Web 2.0 items (increasing every hour)

• 700 ratings in the data base

• 10000 tags in the data base

A solution for informal learning

Page 14: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 14 | November 30, 2009

Version 1.0

Page 15: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 15 | November 30, 2009

Version 1.0

DUINE Prediction Engine

Database of Items

User Interface

Page 16: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 16 | November 30, 2009

How does it work?

Cold-Start = Tag-based recommendation

Collaborative Filtering with ratings

Page 17: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 17 | November 30, 2009

Learner profile

Page 18: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 18 | November 30, 2009

Conclusions

Fed by bottom-upapproach

Fed by top-downapproach

How tocombine?

Page 19: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 19 | November 30, 2009

Future R&D

Page 20: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 20 | November 30, 2009

Many thanks for your interest!

This slide is available here:http://www.slideshare.com/Drachsler

Email: [email protected]: celstec-hendrik.drachslerBlogging at: http://elgg.ou.nl/hdr/weblogTwittering at: http://twitter.com/HDrachsler

Page 21: How Recommender Systems in Technology-Enhanced Learning depend on Context

[email protected] - Alpine rendez-vous workshop on context-aware recommendation 2009, Garmisch-Partenkirchen, DEPage 21 | November 30, 2009

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