A unified framework for high-dimensional analysis of $M$-estimators with decomposable regularizers
Negahban, Sahand, Yu, Bin, Wainwright, Martin J., Ravikumar, Pradeep K.
–Neural Information Processing Systems
High-dimensional statistical inference deals with models in which the the number ofparameters p is comparable to or larger than the sample size n. Since it is usually impossible to obtain consistent procedures unless p/n 0, a line of recent work has studied models with various types of structure (e.g., sparse vectors; block-structuredmatrices; low-rank matrices; Markov assumptions). In such settings, a general approach to estimation is to solve a regularized convex program (known as a regularized M-estimator) which combines a loss function (measuring how well the model fits the data) with some regularization function that encourages theassumed structure. The goal of this paper is to provide a unified framework forestablishing consistency and convergence rates for such regularized M-estimators under high-dimensional scaling. We state one main theorem and show how it can be used to re-derive several existing results, and also to obtain several new results on consistency and convergence rates. Our analysis also identifies two key properties of loss and regularization functions, referred to as restricted strong convexity and decomposability, that ensure the corresponding regularized M-estimators have fast convergence rates.
Neural Information Processing Systems
Dec-31-2009