|
Dec 10, 2007
Maximum Likelihood Estimation in Latent Class Models for Contingency Table Data
Yi Zhou
|
|
Dec 3, 2007
Causal discovery based on non-gaussianity
Patrick Hoyer
|
|
Nov 26, 2007
Statistical Parsing Triptych: Jeopardy, Morphosyntax, and M-Estimation
Noah Smith
|
|
Nov 19, 2007
The Maximum Entropy Principle
Miroslav Dudik
|
|
Nov 12, 2007
Spatiotemporal Stochastic Processes and Their Prediction
Cosma Shalizi
|
|
Nov 05, 2007
Stochastic Processes and their Prediction
Cosma Shalizi
|
|
Oct 29, 2007
Proximity on Graphs: Definitions, Fast Solutions and Applications
Hanghang Tong
|
|
Oct 22, 2007
Machine Learning in in vivo CNS Drug Discovery
Jeff Schneider
|
|
Oct 16, 2007 (Tue)
Visualizing Social Media: Principles and Techniques
Matthew Hurst
|
|
Oct 1, 2007
Random Walks on Graphs: A General Overview
Purnamrita Sarkar
|
|
Sept 24, 2007
Some Topics in Spam Filtering
D. Sculley
|
|
May 7, 2007
Probabilistic Inference in Distributed Systems
Stanislav Funiak
|
|
Apr 23, 2007
Learning without the loss function
John Langford
|
|
Apr 16, 2007
Sparsity recovery and structure learning
Pradeep Ravikumar
|
|
April 2, 2007
A unifying view of component analysis (from a computer vision perspective)
Fernando De la Torre
|
|
Mar 19, 2007
Active Learning of Binary Classifiers
Nina Balcan
|
|
Mar 5, 2007
Features, kernels, and similarity functions
Avrim Blum
|
|
Feb 26, 2007
Models of real-world networks (Part II)
Jure Leskovec
|
|
Feb 19, 2007
The structure and function of real-world graphs and networks (Part I)
Jure Leskovec
|
|
Feb 12, 2007
Discrete Markov Random Fields -- the Inference story
Pradeep Ravikumar
|
|
Jan 22, 2007
NIPS 2006 Conference Review Session.
|
|
Jan 22, 2007
Greedy Layer-Wise Training of Deep Networks.
Nathan Ratliff
|
|
Jan 22, 2007
Approximate inference using planar graph decomposition.
Pradeep Ravikumar
|