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PAKDD
2010
ACM

Semi-supervised Tag Recommendation - Using Untagged Resources to Mitigate Cold-Start Problems

13 years 9 months ago
Semi-supervised Tag Recommendation - Using Untagged Resources to Mitigate Cold-Start Problems
Tag recommender systems are often used in social tagging systems, a popular family of Web 2.0 applications, to assist users in the tagging process. But in cold-start situations i.e., when new users or resources enter the system, state-of-the-art tag recommender systems perform poorly and are not always able to generate recommendations. Many user profiles contain untagged resources, which could provide valuable information especially for cold-start scenarios where tagged data is scarce. The existing methods do not explore this additional information source. In this paper we propose to use a purely graph-based semi-supervised relational approach that uses untagged posts for addressing the cold-start problem. We conduct experiments on two real-life datasets and show that our approach outperforms the state-of-the-art in many cases.
Christine Preisach, Leandro Balby Marinho, Lars Sc
Added 20 Jul 2010
Updated 20 Jul 2010
Type Conference
Year 2010
Where PAKDD
Authors Christine Preisach, Leandro Balby Marinho, Lars Schmidt-Thieme
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