See the assignments page for the two problem sets.
Some of the most promising projects:
Hypothesis testing with small sets
Connection between MED and regularization
Feature selection for SVMs theory and experiments
Bayes classification rule and SVMs
IOHMMs evaluation of HMMs for classification vs. direct classification
Reusing the test set datamining bounds
Large-scale nonlinear least square regularization
Viewbased classification
Local vs. global classifiers experiments and theory
RKHS invariance to measure historical math
Concentration experiments (dot product vs. square distance)
Decorrelating classifiers: experiments about generalization using a tree of stumps
Kernel synthesis and selection
Bayesian interpretation of regularization and in particular of SVMs
History of induction from Kant to Popper and current state
Bayesian Priorhood
Resources
The Center for Biological and Computational Learning (CBCL) at MIT was founded with the belief that learning is at the very core of the problem of intelligence, both biological and artificial, and is the gateway to understanding how the human brain works and to making intelligent machines. CBCL studies the problem of learning within a multidisciplinary approach. Its main goal is to nurture serious research on the mathematics, the engineering and the neuroscience of learning. CBCL is based in the Department of Brain and Cognitive Sciences at MIT and is associated with the McGovern Institute for Brain Research and with the Artificial Intelligence Laboratory at MIT.