Authors
Al Mamunur Rashid, Istvan Albert, Dan Cosley, Shyong K Lam, Sean M McNee, Joseph A Konstan, John Riedl
Publication date
2002/1/13
Book
Proceedings of the 7th international conference on Intelligent user interfaces
Pages
127-134
Description
Recommender systems have become valuable resources for users seeking intelligent ways to search through the enormous volume of information available to them. One crucial unsolved problem for recommender systems is how best to learn about a new user. In this paper we study six techniques that collaborative filtering recommender systems can use to learn about new users. These techniques select a sequence of items for the collaborative filtering system to present to each new user for rating. The techniques include the use of information theory to select the items that will give the most value to the recommender system, aggregate statistics to select the items the user is most likely to have an opinion about, balanced techniques that seek to maximize the expected number of bits learned per presented item, and personalized techniques that predict which items a user will have an opinion about. We study the …
Total citations
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Scholar articles
AM Rashid, I Albert, D Cosley, SK Lam, SM McNee… - Proceedings of the 7th international conference on …, 2002