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Contribution Details

Type Journal Article
Scope Discipline-based scholarship
Title Collaborative filtering or regression models for internet recommendation systems?
Organization Unit
Authors
  • Andreas Mild
  • Martin Natter
Item Subtype Original Work
Refereed Yes
Status Published in final form
Language
  • English
Journal Title Journal of Targeting, Measurement and Analysis for Marketing
Publisher Palgrave Macmillan Ltd.
Geographical Reach international
ISSN 0967-3237
Volume 10
Number 4
Page Range 304 - 313
Date 2002
Abstract Text The literature on recommendation systems indicates that the choice of the methodology significantly influences the quality of recommendations. The impact of the amount of available data on the performance of recommendation systems has not been systematically investigated. The authors study different approaches to recommendation systems using the publicly available EachMovie data set containing ratings for movies and videos. In contrast to previous work on this data set, here a significantly larger subset is used. The effects caused by the available number of customers and movies as well as their interaction with different methods are investigated. Two commonly used collaborative filtering approaches are compared with several regression models using an experimental full factorial design. According to the findings, the number of customers significantly influences the performance of all approaches under study. For a large number of customers and movies, it is shown that simple linear regression with model selection can provide significantly better recommendations than collaborative filtering. From a managerial perspective, this gives suggestions about the selection of the model to be used depending on the amount of data available. Furthermore, the impact of an enlargement of the customer database on the quality of recommendations is shown.
Digital Object Identifier 10.1057/palgrave.jt.5740055
Other Identification Number merlin-id:14207
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