Slope meets Lasso in sparse linear regression
Abstract: We will present results in sparse linear regression on two convex regularized estimators, the Lasso and the recently introduced Slope estimator, in the high-dimensional setting where the number of covariates p is larger than the number of observations n. The estimation and prediction performance of these estimators will be presented, as well as a comparative study of the assumptions on the design matrix. https://arxiv.org/pdf/1605.08651.pdf Biography: I am an Assistant Professor of statistics at Rutgers, the State University of New Jersey. I obtained my PhD…