Coordinate Descent for MCP/SCAD Penalized Least Squares Converges Linearly
Jiao, Yuling, Li, Dingwei, Liu, Min, Lu, Xiliang
Recovering sparse signals from observed data is an important topic in signal/imaging processing, statistics and machine learning. Nonconvex penalized least squares have been attracted a lot of attentions since they enjoy nice statistical properties. Computationally, coordinate descent (CD) is a workhorse for minimizing the nonconvex penalized least squares criterion due to its simplicity and scalability. In this work, we prove the linear convergence rate to CD for solving MCP/SCAD penalized least squares problems.
Sep-18-2021