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Personalized recommendation of social software items based on social relations
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ACM Conference On Recommender Systems archive
Proceedings of the third ACM conference on Recommender systems table of contents
New York, New York, USA
SESSION: Tags and social networks table of contents
Pages 53-60  
Year of Publication: 2009
ISBN:978-1-60558-435-5
Authors
Ido Guy  IBM Research, Haifa, Israel
Naama Zwerdling  IBM Research, Haifa, Israel
David Carmel  IBM Research, Haifa, Israel
Inbal Ronen  IBM Research, Haifa, Israel
Erel Uziel  IBM Research, Haifa, Israel
Sivan Yogev  IBM Research, Haifa, Israel
Shila Ofek-Koifman  IBM Research, Haifa, Israel
Sponsor
SIGCHI: ACM Special Interest Group on Computer-Human Interaction
Publisher
ACM  New York, NY, USA
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ABSTRACT

We study personalized recommendation of social software items, including bookmarked web-pages, blog entries, and communities. We focus on recommendations that are derived from the user's social network. Social network information is collected and aggregated across different data sources within our organization. At the core of our research is a comparison between recommendations that are based on the user's familiarity network and his/her similarity network. We also examine the effect of adding explanations to each recommended item that show related people and their relationship to the user and to the item. Evaluation, based on an extensive user survey with 290 participants and a field study including 90 users, indicates superiority of the familiarity network as a basis for recommendations. In addition, an important instant effect of explanations is found - interest rate in recommended items increases when explanations are provided.


REFERENCES

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