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Automated calibration for stability selection in penalised regression and graphical models

Barbara Bodinier, Sarah Filippi, Therese Haugdahl Nøst, Julien Chiquet, Marc Chadeau‐Hyam

2023Journal of the Royal Statistical Society Series C (Applied Statistics)29 citationsDOIOpen Access PDF

Abstract

Stability selection represents an attractive approach to identify sparse sets of features jointly associated with an outcome in high-dimensional contexts. We introduce an automated calibration procedure via maximisation of an in-house stability score and accommodating a priori-known block structure (e.g. multi-OMIC) data. It applies to [Least Absolute Shrinkage Selection Operator (LASSO)] penalised regression and graphical models. Simulations show our approach outperforms non-stability-based and stability selection approaches using the original calibration. Application to multi-block graphical LASSO on real (epigenetic and transcriptomic) data from the Norwegian Women and Cancer study reveals a central/credible and novel cross-OMIC role of LRRN3 in the biological response to smoking. Proposed approaches were implemented in the R package sharp.

Topics & Concepts

Lasso (programming language)Stability (learning theory)CalibrationSelection (genetic algorithm)Elastic net regularizationComputer scienceBlock (permutation group theory)Graphical modelRegressionData miningFeature selectionMachine learningArtificial intelligenceMathematicsStatisticsWorld Wide WebGeometryGene expression and cancer classificationBioinformatics and Genomic NetworksStatistical Methods and Inference
Automated calibration for stability selection in penalised regression and graphical models | Litcius