Optimal computational and statistical rates of convergence for sparse nonconvex learning problems
Zhaoran Wang, Han Liu, Tong Zhang

TL;DR
This paper introduces an efficient algorithm for solving nonconvex penalized M-estimators, providing optimal convergence rates and refined statistical guarantees for sparse learning problems.
Contribution
It proposes a regularization path-following algorithm with optimal geometric convergence and detailed statistical analysis for nonconvex sparse estimation.
Findings
Achieves global geometric convergence rate for full regularization path
Provides sharp sample complexity bounds for local solutions
Ensures oracle support recovery for the final estimator
Abstract
We provide theoretical analysis of the statistical and computational properties of penalized -estimators that can be formulated as the solution to a possibly nonconvex optimization problem. Many important estimators fall in this category, including least squares regression with nonconvex regularization, generalized linear models with nonconvex regularization and sparse elliptical random design regression. For these problems, it is intractable to calculate the global solution due to the nonconvex formulation. In this paper, we propose an approximate regularization path-following method for solving a variety of learning problems with nonconvex objective functions. Under a unified analytic framework, we simultaneously provide explicit statistical and computational rates of convergence for any local solution attained by the algorithm. Computationally, our algorithm attains a global…
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