Automated calibration for stability selection in penalised regression and graphical models
Permanent lenke
https://hdl.handle.net/10037/32874Dato
2023-07-13Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Bodinier, Barbara; Filippi, Sarah; Nøst, Therese Haugdahl; Chiquet, Julien; Chadeau-Hyam, MarcSammendrag
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.
Forlag
Oxford University PressSitering
Bodinier, Filippi, Nøst, Chiquet, Chadeau-Hyam. Automated calibration for stability selection in penalised regression and graphical models. The Journal of the Royal Statistical Society, Series C (Applied Statistics). 2023;72(5):1375-1393Metadata
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