Some notes on robust sure independence screening
Weiyan Mu and
Shifeng Xiong
Journal of Applied Statistics, 2014, vol. 41, issue 10, 2092-2102
Abstract:
Sure independence screening (SIS) proposed by Fan and Lv [4] uses marginal correlations to select important variables, and has proven to be an efficient method for ultrahigh-dimensional linear models. This paper provides two robust versions of SIS against outliers. The two methods, respectively, replace the sample correlation in SIS with two robust measures, and screen variables by ranking them. Like SIS, the proposed methods are simple and fast. In addition, they are highly robust against a substantial fraction of outliers in the data. These features make them applicable to large datasets which may contain outliers. Simulation results are presented to show their effectiveness.
Date: 2014
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DOI: 10.1080/02664763.2014.909777
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