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System-wide effectiveness of active learning in collaborative filtering

System-wide effectiveness of active learning in collaborative filtering

This video was recorded at International Workshop on Social Web Mining, Barcelona 2011. The accuracy of a collaborative-filtering system largely depends on two factors: the quality of the recommendation algorithm and the number and quality of the available product ratings. In general, the more ratings are elicited from the users, the more effective the recommendations are. However, not all the ratings are equally useful and specific techniques, which are defined as rating elicitation strategies, can be used to selectively choosing the items to be presented to the user for rating. In this paper we consider several rating elicitation strategies and we evaluate their system utility, i.e., how the overall behavior of the system changes when new ratings are added. We discuss the pros and cons of different strategies with respect to several metrics (MAE, precision, NDCG and coverage). It is shown that different strategies can improve different aspects of the recommendation quality.

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