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RecSysTEL Workshop
FIRST CALL FOR PAPERS: Workshop on Recommender Systems for Technology Enhanced Learning (RecSysTEL). Barcelona, Spain, 29-30 September 2010
Organised jointly by
- 4th ACM Conference on Recommender Systems (RecSys 2010)
- 5th European Conference on Technology Enhanced Learning (EC-TEL 2010)

http://adenu.ia.uned.es/workshops/recsystel2010/

AIM & TOPICS

Technology enhanced learning (TEL) aims to design, develop and test  socio-technical innovations that will support and enhance learning practices of both individuals and  organisations. It is an application domain that generally addresses all types of technology  research & development aiming to support of teaching and learning activities. Information retrieval  is a pivotal activity in TEL, and the deployment of recommender systems has attracted increased interest  during the past years.

Recommendation methods, techniques and systems open an interesting new approach to facilitate and support learning and teaching. There are plenty a resource  available on the Web, both in terms of digital learning content and people resources (e.g. other  learners, experts, tutors) that can be used to facilitate teaching and learning tasks. The challenge is  to develop, deploy and evaluate systems that provide learners and teachers with meaningful  guidance in order to help identify suitable learning resources from a potentially overwhelming  variety of choices.

The aim of the Workshop is to bring together researchers and practitioners  that are working on topics related to the design, development and testing of recommender systems  in educational settings as well as present the current status of research in this area and create  cross-disciplinary liaisons between the RecSys and EC-TEL communities. Overall, it aims to outline the  rich potential of TEL as an application area for recommender systems, as well as expose  participants to the challenges of developing such systems in a TEL context.

Topics include but are not limited to:
- User tasks to be supported by recommender systems in TEL
- Focus of recommendation in TEL
- Requirements for the deployment of TEL recommender systems
- Publicly available data sets for TEL recommender systems
- Recommendation algorithms and systems for TEL
- Transfer of successful algorithms and systems from other application areas
- Evaluation criteria and methods for TEL recommender systems

IMPORTANT DATES
20 June 2010: Submissions
16 July 2010: Notifications
1 August 2010: Camera-ready of accepted papers
29-30 September 2010: RecSysTEL Workshop in Barcelona

DATATEL CHALLENGE
Published data sets in recommender systems, such as the MovieLens and  EachMovie ones, are very often used in experimental testing of new recommendation  algorithms. Very few data sets are publicly made available online for TEL applications.  Thus, it is not possible yet for TEL recommender systems' researchers to apply and  benchmark their algorithms on existing, public data sets.

To this end, the DATATEL Theme Team of the European STELLAR Network of  Excellence (http://www.stellarnet.eu) is sponsoring the DATATEL Challenge: a call for TEL Data Sets that invites research groups to submit existing data sets from TEL applications that can be used as input for TEL recommender systems (e.g. ratings, tags,  bookmarks).

The winner of the DATATEL Challenge will receive a best TEL Data Set award  as well as travel/subsistence support to attend the RecSysTELWorkshop.

SUBMISSIONS

The Workshop accepts a variety of submission types:
- Full papers: 12 pages
- Short papers: 6 pages
- System/service demos: 2 pages
- TEL Data sets: 2 pages and data set file (specs/format to be announced  soon)

Papers should be original and not previously submitted to other venues.
Submission will be available through the EasyChair submission system:
http://www.easychair.org/conferences/?conf=recsystel10

If you haven't an EasyChair account yet, you'll be asked to create it before  you can access the RecSysTEL'10 page.

PUBLICATION

Workshop proceedings will be published in a seperate volume by a publisher that will be announced soon.
In addition, authors of best full papers will be invited to submit a revised version of their manuscripts for a Special Issue in a prestigious international journal such as the IEEE Transactions on Learning Technologies.

STEERING COMMITTEE
Jesus G. Boticario, aDeNu - Spanish National University for Distance  Education (Spain)
Peter Brusilovksy, University of Pittsburgh (USA)
Erik Duval, Katholieke Universiteit Leuven (Belgium)
Denis Gillet, Swiss Federal Institute of Lausanne (Switzerland)
Stefanie Lindstaedt, Know-Center Graz (Austria)
Peter Scott, Open University (UK)
Fridolin Wild, Open University (UK)
Martin Wolpers, Fraunhofer FIT (Germany)
Riina Vuorikari, European Schoolnet (Belgium)

CO-CHAIRS
Nikos Manouselis, Greek Research & Technology Network (Greece)
Hendrik Drachsler, Open Universiteit Nederlands (The Netherlands)
Katrien Verbert, Katholieke Universiteit Leuven (Belgium)
Olga C. Santos, aDeNu - Spanish National University for Distance Education  (Spain)

ABOUT RecSys 2010 and EC-TEL 2010
The 4th ACM Conference on Recommender Systems (RecSys 2010) is the premier annual event on research and applications of recommender technologies. It will promote a close interaction among practitioners and researchers, reaching a wider range of participants including those from Europe and Asia. See http://recsys.acm.org/2010/ for details.

The 5th European Conference on Technology Enhanced Learning (EC-TEL 2010)  brings together technological developments, learning models, and implementations of new and innovative approaches to training and education. The conference traditionally explores how the synergy of multiple disciplines can provide new, more effective and more especially more sustainable, technology-enhanced learning solutions to learning problems. See http://www.ectel2010.org for details.
posted by Jérôme Zeiliger on 05/10/10 17:42:15
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