Group-based collaborative filtering supported by multiple users' feedback to improve personalized ranking
da Costa, Arthur F., Manzato, Marcelo G., and Campello, Ricardo (2016) Group-based collaborative filtering supported by multiple users' feedback to improve personalized ranking. In: Proceedings of the 22nd Brazilian Symposium on Multimedia and the Web. pp. 279-286. From: WebMedia 2016: 22nd Brazilian Symposium on Multimedia and the Web, 8-11 November 2016, Teresina, Brazil.
PDF (Published Version)
- Published Version
Restricted to Repository staff only |
Abstract
Recommender systems were created to represent user preferences for the purpose of suggesting items to purchase or examine. However, there are several optimizations to be made in these systems mainly with respect to modeling the user profile and remove the noise information. This paper proposes a collaborative filtering approach based on preferences of groups of users to improve the accuracy of recommendation, where the distance among users is computed us ing multiple types of users' feedback. The advantage of this approach is that relevant items will be suggested based only on the subjects of interest of each group of users. Using this technique, we use a state-of-art collaborative filtering algorithm to generate a personalized ranking of items according to the preferences of an individual within each cluster. The experimental results show that the proposed technique has a higher precision than the traditional models without clustering.
Item ID: | 46778 |
---|---|
Item Type: | Conference Item (Research - E1) |
ISBN: | 978-1-4503-4512-5 |
Keywords: | recommender systems; collaborative filtering; data clustering |
Date Deposited: | 21 Mar 2017 23:48 |
FoR Codes: | 49 MATHEMATICAL SCIENCES > 4901 Applied mathematics > 490199 Applied mathematics not elsewhere classified @ 100% |
SEO Codes: | 97 EXPANDING KNOWLEDGE > 970101 Expanding Knowledge in the Mathematical Sciences @ 100% |
Downloads: |
Total: 3 |
More Statistics |