Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensional supervised problems with sparse signals; that is, a limited number of observations (), each with a very large number of covariates ( >> ), only a small share of which is truly associated with the response. In these settings, major concerns on computational burden, algorithmic stability, and statistical accuracy call for substantially reducing the feature space by eliminating redundant covariates before the use of any sophisticated statistical analysis. Along the lines of (Fan and Lv, 2008) and other model- and correlation-based feature screening methods, we propose a model-free procedure called (CIS). CIS uses a marginal utility connected to the notion of the traditional Fisher Information, possesses the sure screening property, and is applicable to any type of response (features) with continuous features (response). Simulations and an application to transcriptomic data on rats reveal the comparative strengths of CIS over some popular feature screening methods.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9512254 | PMC |
http://dx.doi.org/10.1080/01621459.2020.1864380 | DOI Listing |
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