Sciweavers

IR
2002

An Empirical Analysis of Design Choices in Neighborhood-Based Collaborative Filtering Algorithms

13 years 11 months ago
An Empirical Analysis of Design Choices in Neighborhood-Based Collaborative Filtering Algorithms
Collaborative filtering systems predict a user's interest in new items based on the recommendations of other people with similar interests. Instead of performing content indexing or content analysis, collaborative filtering systems rely entirely on interest ratings from members of a participating community. Since predictions are based on human ratings, collaborative filtering systems have the potential to provide filtering based on complex attributes, such as quality, taste, or aesthetics. Many implementations of collaborative filtering apply some variation of the neighborhood-based prediction algorithm. Many variations of similarity metrics, weighting approaches, combination measures, and rating normalization have appeared in each implementation. For these parameters and others, there is no consensus as to which choice of technique is most appropriate for what situations, nor how significant an effect on accuracy each parameter has. Consequently, every person implementing a colla...
Jonathan L. Herlocker, Joseph A. Konstan, John Rie
Added 22 Dec 2010
Updated 22 Dec 2010
Type Journal
Year 2002
Where IR
Authors Jonathan L. Herlocker, Joseph A. Konstan, John Riedl
Comments (0)