Authors
Jilin Chen, Rowan Nairn, Les Nelson, Michael Bernstein, Ed Chi
Publication date
2010/4/10
Book
Proceedings of the SIGCHI conference on human factors in computing systems
Pages
1185-1194
Description
More and more web users keep up with newest information through information streams such as the popular micro-blogging website Twitter. In this paper we studied content recommendation on Twitter to better direct user attention. In a modular approach, we explored three separate dimensions in designing such a recommender: content sources, topic interest models for users, and social voting. We implemented 12 recommendation engines in the design space we formulated, and deployed them to a recommender service on the web to gather feedback from real Twitter users. The best performing algorithm improved the percentage of interesting content to 72% from a baseline of 33%. We conclude this work by discussing the implications of our recommender design and how our design can generalize to other information streams.
Total citations
2010201120122013201420152016201720182019202020212022202320241759747677674349243121131452
Scholar articles
J Chen, R Nairn, L Nelson, M Bernstein, E Chi - Proceedings of the SIGCHI conference on human …, 2010