Systems | Information | Learning | Optimization
 

Fast global convergence of gradient methods for high-dimensional statistical recovery

Many statistical M-estimators are based on convex optimization problems formed by the combination of a data-dependent loss function with a norm-based regularizer. We analyze the convergence rates of projected gradient methods for solving such problems, working within a high-dimensional framework that allows the data dimension d to grow with (and …