Authors
Seung-Taek Park, David Pennock, Omid Madani, Nathan Good, Dennis DeCoste
Publication date
2006/8/20
Book
Proceedings of the 12th ACM SIGKDD international conference on Knowledge discovery and data mining
Pages
699-705
Description
The goal of a recommender system is to suggest items of interest to a user based on historical behavior of a community of users. Given detailed enough history, item-based collaborative filtering (CF) often performs as well or better than almost any other recommendation method. However, in cold-start situations - where a user, an item, or the entire system is new - simple non-personalized recommendations often fare better. We improve the scalability and performance of a previous approach to handling cold-start situations that uses filterbots, or surrogate users that rate items based only on user or item attributes. We show that introducing a very small number of simple filterbots helps make CF algorithms more robust. In particular, adding just seven global filterbots improves both user-based and item-based CF in cold-start user, cold-start item, and cold-start system settings. Performance is better when data is scarce …
Total citations
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Scholar articles
ST Park, D Pennock, O Madani, N Good, D DeCoste - Proceedings of the 12th ACM SIGKDD international …, 2006