Can we leverage rating patterns from traditional users to enhance recommendations for children?

08/24/2018
by   Ion Madrazo Azpiazu, et al.
0

Recommender algorithms performance is often associated with the availability of sufficient historical rating data. Unfortunately, when it comes to children, this data is seldom available. In this paper, we report on an initial analysis conducted to examine the degree to which data about traditional users, i.e., adults, can be leveraged to enhance the recommendation process for children.

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