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p o s t e r d e s i g n a n d w o r d p a i n t i n g a l g o r i t h m b y s u m i t b a s u . s o u r c e p h o t o g r a p h b y j m v , u s e d b y p e r m i s s i o n . o r i g i n a l a v a i l a b l e a t h t t p : / / w w w . f l i c k r . c o m / p h o t o s / j m v / 5 2 8 8 7 9 6 7 s o m e r i g h t s r e s e r v e d

Organizing Committee: General Chair: John Platt, Microsoft Research; Program Chairs: Daphne Koller, Stanford University and Yoram Singer, Google and Hebrew University; Tutorials Chair: Chris J.C. Burges, Microsoft Research; Workshop Chairs: Adrienne Fairhall, University of Washington, Charles Isbell, Georgia Institute of Technology, and Bob Williamson, NICTA; Demonstration Chairs: Giacomo Indiveri, ETH Zurich, and Xubo Song, Oregon Graduate Institute; Publications

Chair: Sam Roweis, University of Toronto; Electronic Proceedings Chair: Andrew McCallum, University of Massachusetts, Amherst; Volunteers Chair: Fernando Perez-Cruz, Princeton University; Publicity Chair: Sumit Basu, Microsoft Research

Program Committee: Francis Bach, Ecole des Mines de Paris; Michael Black, Brown University; Nicolò Cesa-Bianchi, Università degli Studi di Milano; Olivier Chapelle, Yahoo! Research; Sanjoy Dasgupta, UC San Diego; Virginia de Sa, UC San Diego; David Fleet, University of Toronto; Isabelle Guyon, ClopiNet; Bert Kappen, University of Nijmegen; Dan Klein, UC Berkeley; Daphne Koller, Stanford (Co-Chair); Chih-Jen Lin, National Taiwan University; Kevin Murphy, University of

British Columbia; William Noble, University of Washington; Stefan Schaal, University of Southern California; Dale Schuurmans, University of Alberta; Odelia Schwartz, Salk Institute and Albert Einstein College of Medicine; Fei Sha, UC Berkeley; Yoram Singer, Google and Hebrew University (Co-Chair); Mark Steyvers, UC Irvine; Alan Stocker, New York University; Yee Whye Teh, Gatsby Unit, UCL; Nikos Vlassis, Technical University of Crete; Ulrike von Luxburg, MPI for

Biological Cybernetics; Chris Williams, University of Edinburgh; Andrew Zisserman, University of Oxford

Mark S. Handcock, University of Washington: Statistical Models for Social Networks with Application to HIV EpidemiologyNick Patterson, Broad Institute of Harvard and MIT: Computational and Statistical Problems in Population Genetics

Yair Censor, University of Haifa: Projection Methods: Algorithmic Structures, Bregman Projections, and Acceleration TechniquesManabu Tanifuji, RIKEN Brain Science Institute: Representation of Object Images in Visual Association Cortex Revealed by Monkey Physiology

Elizabeth Spelke, Harvard University: Core Knowledge of Number and Geometry

Geoffrey Hinton, University of Toronto: Deep Belief NetsBen Taskar, University of Pennsylvania: Structured Prediction

Tomaso Poggio, MIT: Visual Recognition in Primates and MachinesRobert Schapire, Princeton University: Theory and Applications of Boosting

Michael Lewicki, Carnegie Mellon University: Sensory Coding and Hierarchical RepresentationsAndrew Moore, Carnegie Mellon University and Google; Leon Bottou, NEC Labs America: Learning with Large Datasets

NIPS 2007Neural Information Processing Systems

I n v i t e d S p e a k e r s

T u t o r i a l P r e s e n t e r s

T u t o r i a l s : D e c e m b e r 3 | C o n f e r e n c e : D e c e m b e r 3 - 6 | W o r k s h o p s : D e c e m b e r 7 - 8V a n c o u v e r a n d W h i s t l e r, B C , C a n a d a | w w w . n i p s . c c

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