A General Family of Trimmed Estimators for Robust High-dimensional Data Analysis
Yang, Eunho, Lozano, Aurelie, Aravkin, Aleksandr
We consider the problem of robustifying high-dimensional structured estimation. Robust techniques are key in real-world applications which often involve outliers and data corruption. We focus on trimmed versions of structurally regularized M-estimators in the high-dimensional setting, including the popular Least Trimmed Squares estimator, as well as analogous estimators for generalized linear models and graphical models, using possibly non-convex loss functions. We present a general analysis of their statistical convergence rates and consistency, and then take a closer look at the trimmed versions of the Lasso and Graphical Lasso estimators as special cases. On the optimization side, we show how to extend algorithms for M-estimators to fit trimmed variants and provide guarantees on their numerical convergence. The generality and competitive performance of high-dimensional trimmed estimators are illustrated numerically on both simulated and real-world genomics data.
Aug-21-2017
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- Europe > United Kingdom
- England (0.14)
- North America > United States (0.67)
- Europe > United Kingdom
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- Research Report (0.65)
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