Ph.D. Dissertations - Michael Jordan
Matrix Factorization and Matrix Concentration
Lester Mackey [2012]
Randomized Algorithms for Scalable Machine Learning
Ariel Jacob Kleiner [2012]
Bayesian Nonparametric Latent Feature Models
Kurt Miller [2011]
Incorporating Supervision for Visual Recognition and Segmentation
Alex Yu Jen Shyr [2011]
Learning Dependency-Based Compositional Semantics
Percy Shuo Liang [2011]
Automating Datacenter Operations Using Machine Learning
Peter Bodik [2010]
Computational Methods for Meiotic Recombination Inference
Junming Yin [2010]
Modeling Events in Time Using Cascades Of Poisson Processes
Aleksandr Simma [2010]
Probabilistic Models of Evolution and Language Change
Alexandre Bouchard-Cote [2010]
Statistical models for analyzing human genetic variation
Sriram Sankararaman [2010]
Discriminative Machine Learning with Structure
Simon Lacoste-Julien [2009]
Nonparametric Bayesian Models for Machine Learning
Romain Jean Thibaux [2008]
Resampling Methods for Protein Structure Prediction
Benjamin Norman Blum [2008]
Learning in decentralized systems: A nonparametric approach
Xuanlong Nguyen [2007]
Predicting Protein Molecular Function
Barbara Elizabeth Engelhardt [2007]
A Kinetic Model for G protein-coupled Signal Transduction in Macrophage Cells
Patrick Joseph Flaherty [2006]
Automated Music Analysis Using Dynamic Graphical Models
Brian K. Vogel [2005]
Learning Blind Source Separation
Francis R. Bach [2005]
Statistical Software Debugging
Alice X. Zheng [2005]
Probabilistic Graphical Models and Algorithms for Genomic Analysis
Eric Poe Xing [2004]
Probabilistic Models for Text and Images
David M. Blei [2004]
Shaping and Policy Search in Reinforcement Learning
Andrew Y. Ng [2003]
