Issues and considerations regarding sharable data sets for recommender systems in technology enhanced learning

نویسندگان

  • Hendrik Drachsler
  • Toine Bogers
  • Riina Vuorikari
  • Katrien Verbert
  • Erik Duval
  • Nikos Manouselis
  • Günter Beham
  • Stefanie N. Lindstaedt
  • Hermann Stern
  • Martin Friedrich
  • Martin Wolpers
چکیده

This paper raises the issue of missing standardised data sets for recommender systems in Technology Enhanced Learning (TEL) that can be used as benchmarks to compare different recommendation approaches. It discusses how suitable data sets could be created according to some initial suggestions, and investigates a number of steps that may be followed in order to develop reference data sets that will be adopted and reused within a scientific community. In addition, policies are discussed that are needed to enhance sharing of data sets by taking into account legal protection rights. Finally, an initial elaboration of a representation and exchange format for sharable TEL data sets is carried out. The paper concludes with future research needs.

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تاریخ انتشار 2010