Preference Function Learning over Numeric and Multi-valued Categorical Attributes

نویسندگان

  • Lucas Marin
  • David Isern
چکیده

One of the most challenging goals of recommender systems is to infer the preferences of users through the observation of their actions. Those preferences are essential to obtain a satisfactory accuracy in the recommendations. Preference learning is especially difficult when attributes of different kinds (numeric or linguistic) intervene in the problem, and even more when they take multiple possible values. This paper presents an approach to learn user preferences over numeric and multi-valued linguistic attributes through the analysis of the user selections. The learning algorithm has been tested with real data on restaurants, showing a very good performance.

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تاریخ انتشار 2012