[ACM Press the 2008 ACM conference - Lausanne, Switzerland (2008.10.23-2008.10.25)] Proceedings of the 2008 ACM conference on Recommender systems - RecSys '08 - Who predicts better?
โ Scribed by Krishnan, Vinod; Narayanashetty, Pradeep Kumar; Nathan, Mukesh; Davies, Richard T.; Konstan, Joseph A.
- Book ID
- 121260605
- Publisher
- ACM Press
- Year
- 2008
- Weight
- 412 KB
- Category
- Article
- ISBN
- 1605580937
No coin nor oath required. For personal study only.
โฆ Synopsis
Algorithmic recommender systems attempt to predict which items a target user will like based on information about the user's prior preferences and the preferences of a larger community. After more than a decade of widespread use, researchers and system users still debate whether such "impersonal" recommender systems actually perform as well as human recommenders. We compare the performance of MovieLens algorithmic predictions with the recommendations made, based on the same user profiles, by active MovieLens users. We found that algorithmic collaborative filtering outperformed humans on average, though some individuals outperformed the system substantially and humans on average outperformed the system on certain prediction tasks.
๐ SIMILAR VOLUMES