NIPS'07 workshop on statistical models of networks
Organizers:
Lise Getoor,
Raphael Gottardo,
Kevin Murphy,
Eric Xing.
Sat December 8th, 2007, Whistler, BC.
Hilton: Black Tusk  room
General
information
on NIPS workshops
The purpose of the workshop is to bring together people from different
disciplines - computer science, statistics, biology, physics, social
science, etc - to discuss foundational issues in the modeling of
network and relational data.
In particular, we hope to discuss various open
research issues, such as
-  How to represent graphs at varying levels of
abstraction, whose topology is potentially condition-specific and
time-varying
-  How to combine techniques from the graphical model structure learning community
with techniques from the statistical network modeling community
-  How to integrate relational data with other kinds of
data (e.g., gene expression, sequence or text data)
-  A constraint optimization
frameworks for efficient inference in hTERGM Amr Ahmed, Eric Xing
-  Statistical discovery of
signaling pathways from an ensemble of weakly informative data sources,
Edoardo Airoldi, Florian Markowetz, David Blei, Olga Troyanskaya
-  A dynamic theory of social failure
in isolated communities,
Edoardo Airoldi, David Blei, Eric Xing, Stephen Fienberg
-  Graph reconstruction with degree-constrained subgraphs, Stuart Andrews, Tony Jebara
-  Inferring vertex properties from topology in large
networks, Janne Aukia, Samuel Kaski, Janne Sinkkonen
-  Graph clustering, clique matrices and
constrained covariances, David Barber
-  Analysing the AS graph instead of just
AS graph measurements, Peter Boothe
-  Social media analysis via network approaches,
Victor Cheung, Zhi-Li Wu, Chung-hung Li
-  Energy-based factor graphs for prediction in relational
data, Sumit Chopra, Yann LeCun
-  Modeling Go positions with planar CRFs,
Dmitry Kamenetsky, Nic Schraudolph, Simon Gunter, SVN Vishwanathan
-  Modeling evolution of ideas in the
web of science, Laura Dietz, Steffen Bickel
-  Weak interventions and
instrumental variables, Frederick Eberhardt
-  Activity spreading in modula
networks, Aram Galstyan, Paul Cohen
-  Network completion and survey sampling,
Steve Hanneke and Eric Xing
-  A Bayesian framework for community detection in
networks, Jake Hofman, Chris Wiggins
-  Reasoning about large populations with lifted
probabilistic inference, Kristian Kersting, Brian Milch,
Like Zettlemoyer, Michael Haimes, Leslie Kaelbling
-  Modeling network structure using
kronecker multiplication,
Jure Leskovec
-  Community-based link prediction with
text, David Mimno, Hanna Wallach, Andrew McCallum
-  Non-stationary dynamic Bayesian networks,
Joshua Robinson, ALex Hartemink
-  Creating social network models from sensor data,
Danny Wyatt, Tanzeem Choudhury, Jeff Bilmes