A bagging SVM to learn from positive and unlabeled examples
A consistent dot product embedding for stochastic blockmodel graphs
A convex model for non-negative matrix factorization and dimensionality reduction on physical space
A D.C. Programming Approach to the Sparse Generalized Eigenvalue Problem
A Flexible, Scalable and Efficient Algorithmic Framework for Primal Graphical Lasso
A General Framework of Dual Certificate Analysis for Structured Sparse Recovery Problems
A General Theory of Concave Regularization for High Dimensional Sparse Estimation Problems
A generalized risk-based approach to segmentation based on hidden Markov models
A Geometric Proof of Calibration
A hierarchical Dirichlet process mixture model for haplotype reconstruction from multi-population data
A Kernel Approach to Tractable Bayesian Nonparametrics
A kernel-based framework for learning graded relations from data
A Large-Deviation Analysis of the Maximum-Likelihood Learning of Markov Tree Structures
A Method for Compressing Parameters in Bayesian Models with Application to Logistic Sequence Prediction Models
A more robust boosting algorithm
A Multivariate Regression Approach to Association Analysis of Quantitative Trait Network
A new protein binding pocket similarity measure based on comparison of 3D atom clouds: application to ligand prediction
A non-negative expansion for small Jensen-Shannon Divergences
A Nonconformity Approach to Model Selection for SVMs
A Nonparametric Frequency Domain EM Algorithm for Time Series Classification with Applications to Spike Sorting and Macro-Economics