Trimming Stability Selection increases variable selection robustness
Tino Werner

TL;DR
This paper introduces a trimmed Stability Selection method that enhances variable selection robustness against contamination by aggregating models with minimal in-sample loss, demonstrated through extensive simulations.
Contribution
It proposes a novel trimming approach to Stability Selection, increasing its robustness to data contamination and outlier configurations.
Findings
Trimmed Stability Selection improves robustness in variable selection.
Non-robust algorithms are highly fragile under contamination.
Simulation results show significant robustness gains with the proposed method.
Abstract
Contamination can severely distort an estimator unless the estimation procedure is suitably robust. This is a well-known issue and has been addressed in Robust Statistics, however, the relation of contamination and distorted variable selection has been rarely considered in literature. As for variable selection, many methods for sparse model selection have been proposed, including the Stability Selection which is a meta-algorithm based on some variable selection algorithm in order to immunize against particular data configurations. We introduce the variable selection breakdown point that quantifies the number of cases resp. cells that have to be contaminated in order to let no relevant variable be detected. We show that particular outlier configurations can completely mislead model selection and argue why even cell-wise robust methods cannot fix this problem. We combine the variable…
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Taxonomy
TopicsStatistical Methods and Inference · Advanced Statistical Methods and Models · Fault Detection and Control Systems
