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SIS: An R Package for Sure Independence Screening in Ultrahigh-Dimensional Statistical Models
Author(s) -
Diego Franco Saldana,
Yang Feng
Publication year - 2018
Publication title -
journal of statistical software
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 7.636
H-Index - 145
ISSN - 1548-7660
DOI - 10.18637/jss.v083.i02
Subject(s) - feature selection , lasso (programming language) , independence (probability theory) , r package , scad , computer science , covariate , thresholding , regularization (linguistics) , false discovery rate , selection (genetic algorithm) , variable (mathematics) , model selection , data mining , algorithm , mathematics , artificial intelligence , machine learning , statistics , myocardial infarction , image (mathematics) , gene , psychology , mathematical analysis , biochemistry , chemistry , computational science , psychiatry , world wide web
We revisit sure independence screening procedures for variable selection in generalized linear models and the Cox proportional hazards model. Through the publicly available R package SIS, we provide a unified environment to carry out variable selection using iterative sure independence screening (ISIS) and all of its variants. For the regularization steps in the ISIS recruiting process, available penalties include the LASSO, SCAD, and MCP while the implemented variants for the screening steps are sample splitting, data-driven thresholding, and combinations thereof. Performance of these feature selection techniques is investigated by means of real and simulated data sets, where we find considerable improvements in terms of model selection and computational time between our algorithms and traditional penalized pseudo-likelihood methods applied directly to the full set of covariates.

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