RecSys’09: Third ACM
Conference on Recommender Systems
New York City, NY, USA • October 22-25, 2009
Paper Submission:
May 8, 2009
ORGANIZING COMMITTEE
General Chairs:
Lawrence Bergman, IBM Research, USA
Alex Tuzhilin, New York University, USA
Program Chairs:
Robin Burke, DePaul University, USA
Alexander Felfernig,
Graz University of Technology, Austria
Lars Schmidt-Thieme,
University of Hildesheim, Germany
Industry Chairs:
John Ciancutti, Netflix, USA
Paul Lamere, Sun Microsystems, USA
Workshop Chairs:
Joseph Konstan, University of Minnesota, USA
Sean McNee, FTI Technology, USA
Doctoral Symposium Chairs:
Michael O’Mahoney, University College Dublin, Ireland
Paul Resnick, University of Michigan, USA
Publicity Chair:
Zan Huang, Pennsylvania State University, USA
Asian Liaison:
Dong Zhang, Google Research, China
European Liaison:
Alexandros Nanopoulos,
University of Hildesheim, Germany
RecSys’09: The Third ACM Conference on Recommender Systems builds on
the success of Recommenders 06 Summer School in Bilbao, Spain, RecSys’07
in Minneapolis, USA, and RecSys’08 in Lausanne, Switzerland. Many members
of the practitioner and research communities valued the rich exchange of ideas
made possible by the shared plenary sessions at these events. RecSys’09
will promote the same close interaction among practitioners and researchers,
reaching a wider range of participants including those from Europe and Asia.
Published papers will go through a full peer review process. The conference
proceedings are expected to be widely read and cited. In addition to a regular
technical program, there will be tutorials covering the state-of-the-art of this do-
main, a doctoral consortium, an industrial program comprised of keynote speak-
ers and practice/industry-paper tracks, and special-topic workshops.
TOPICS OF INTEREST INCLUDE (but are not limited to):
• Case studies of recommender system • Recommendation algorithms
implementations • Recommendation in social networks
• Conversational recommender systems • Recommender system interfaces
• Context-aware and multidimensional rec- • Scalability issues
ommender systems • Security and privacy
• Evaluation of recommender systems • Semantic web technologies for
• Group recommenders recommender systems
• The impact of recommenders in practice • Theoretical aspects of recommender
• Innovative recommender applications systems
• Novel paradigms of recommender systems • User modeling and recommender systems
• Personalization • Userstudies
More information at
http://recsys.acm.org