Authors
Li-Ping Zhu, Lexin Li, Runze Li, Li-Xing Zhu
Publication date
2011/12/1
Journal
Journal of the American Statistical Association
Volume
106
Issue
496
Pages
1464-1475
Publisher
Taylor & Francis
Description
With the recent explosion of scientific data of unprecedented size and complexity, feature ranking and screening are playing an increasingly important role in many scientific studies. In this article, we propose a novel feature screening procedure under a unified model framework, which covers a wide variety of commonly used parametric and semiparametric models. The new method does not require imposing a specific model structure on regression functions, and thus is particularly appealing to ultrahigh-dimensional regressions, where there are a huge number of candidate predictors but little information about the actual model forms. We demonstrate that, with the number of predictors growing at an exponential rate of the sample size, the proposed procedure possesses consistency in ranking, which is both useful in its own right and can lead to consistency in selection. The new procedure is computationally …
Total citations
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Scholar articles
LP Zhu, L Li, R Li, LX Zhu - Journal of the American Statistical Association, 2011