MLLGMay 9, 2015

Estimation with Norm Regularization

arXiv:1505.02294v363 citations
Originality Incremental advance
AI Analysis

This provides a unified theoretical framework for structured statistical recovery, but it is incremental as it extends existing analysis to broader conditions.

The paper generalizes non-asymptotic error analysis for norm-regularized regression (e.g., Lasso) by considering norms, loss functions, design matrices, and noise models, showing that sample complexity depends on Gaussian width and estimation error scales as c/√n after crossing a threshold.

Analysis of non-asymptotic estimation error and structured statistical recovery based on norm regularized regression, such as Lasso, needs to consider four aspects: the norm, the loss function, the design matrix, and the noise model. This paper presents generalizations of such estimation error analysis on all four aspects compared to the existing literature. We characterize the restricted error set where the estimation error vector lies, establish relations between error sets for the constrained and regularized problems, and present an estimation error bound applicable to any norm. Precise characterizations of the bound is presented for isotropic as well as anisotropic subGaussian design matrices, subGaussian noise models, and convex loss functions, including least squares and generalized linear models. Generic chaining and associated results play an important role in the analysis. A key result from the analysis is that the sample complexity of all such estimators depends on the Gaussian width of a spherical cap corresponding to the restricted error set. Further, once the number of samples $n$ crosses the required sample complexity, the estimation error decreases as $\frac{c}{\sqrt{n}}$, where $c$ depends on the Gaussian width of the unit norm ball.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes