SUPPORT RECOVERY WITHOUT INCOHERENCE: A CASE FOR NONCONVEX REGULARIZATION

Citation
Po-ling Loh et Martin J. Wainwright, SUPPORT RECOVERY WITHOUT INCOHERENCE: A CASE FOR NONCONVEX REGULARIZATION, Annals of statistics , 45(6), 2017, pp. 2455-2482
Journal title
ISSN journal
00905364
Volume
45
Issue
6
Year of publication
2017
Pages
2455 - 2482
Database
ACNP
SICI code
Abstract
We develop a new primal-dual witness proof framework that may be used to establish variable selection consistency and ..-bounds for sparse regression problems, even when the loss function and regularizer are nonconvex. We use this method to prove two theorems concerning support recovery and ..-guarantees for a regression estimator in a general setting. Notably, our theory applies to all potential stationary points of the objective and certifies that the stationary point is unique under mild conditions. Our results provide a strong theoretical justification for the use of nonconvex regularization: For certain nonconvex regularizers with vanishing derivative away from the origin, any stationary point can be used to recover the support without requiring the typical incoherence conditions present in .1-based methods. We also derive corollaries illustrating the implications of our theorems for composite objective functions involving losses such as least squares, nonconvex modified least squares for errors-in-variables linear regression, the negative log likelihood for generalized linear models and the graphical Lasso. We conclude with empirical studies that corroborate our theoretical predictions.