MLJun 20, 2013

Optimal computational and statistical rates of convergence for sparse nonconvex learning problems

arXiv:1306.4960v521.7186 citations
Originality Incremental advance
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This work addresses the computational and statistical bottlenecks in high-dimensional sparse estimation for researchers and practitioners in machine learning, offering incremental improvements over existing methods by refining bounds and extending convergence to full regularization paths.

The paper tackles the challenge of solving sparse nonconvex learning problems, which are intractable for global optimization, by proposing an approximate regularization path-following method that achieves optimal computational rates (global geometric convergence for the full path) and improved statistical rates (sharp sample complexity and exact support recovery) for local solutions.

We provide theoretical analysis of the statistical and computational properties of penalized $M$-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 geometric rate of convergence for calculating the full regularization path, which is optimal among all first-order algorithms. Unlike most existing methods that only attain geometric rates of convergence for one single regularization parameter, our algorithm calculates the full regularization path with the same iteration complexity. In particular, we provide a refined iteration complexity bound to sharply characterize the performance of each stage along the regularization path. Statistically, we provide sharp sample complexity analysis for all the approximate local solutions along the regularization path. In particular, our analysis improves upon existing results by providing a more refined sample complexity bound as well as an exact support recovery result for the final estimator. These results show that the final estimator attains an oracle statistical property due to the usage of nonconvex penalty.

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