Herein, we propose a Spearman rank correlation-based screening procedure for ultrahigh-dimensional data with censored response cases. The proposed method is model-free without specifying any regression forms of predictors or response variables and is robust under the unknown monotone transformations of these response variable and predictors. The sure-screening and rank-consistency properties are established under some mild regularity conditions. Simulation studies demonstrate that the new screening method performs well in the presence of a heavy-tailed distribution, strongly dependent predictors or outliers, and offers superior performance over the existing nonparametric screening procedures. In particular, the new screening method still wo...
To accommodate the heterogeneity that is often present in ultrahigh-dimensional data, we pro-pose a ...
This work is concerned with marginal sure independence feature screening for ultrahigh dimensional d...
Quantile regression is a flexible approach to assessing covariate effects on failure time, which has...
This article is concerned with screening features in ultrahigh-dimensional data analysis, which has ...
High-dimensional data are commonly seen in modern statistical applications, variable selection metho...
The widely used least absolute deviation (LAD) estimator with the smoothly clipped absolute deviatio...
Variable screening and variable selection methods play important roles in modeling high dimensional ...
<div><p>Statistical inference can be over optimistic and even misleading based on a selected model d...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
<p>The correlations are based on cross-validations, where the last column stands for an overall calc...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
Global sensitivity analysis (GSA) is a valuable tool for filtering out non-influential model inputs....
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
A variable screening procedure via correlation learning was proposed by Fan and Lv (2008) to reduce ...
To accommodate the heterogeneity that is often present in ultrahigh-dimensional data, we pro-pose a ...
This work is concerned with marginal sure independence feature screening for ultrahigh dimensional d...
Quantile regression is a flexible approach to assessing covariate effects on failure time, which has...
This article is concerned with screening features in ultrahigh-dimensional data analysis, which has ...
High-dimensional data are commonly seen in modern statistical applications, variable selection metho...
The widely used least absolute deviation (LAD) estimator with the smoothly clipped absolute deviatio...
Variable screening and variable selection methods play important roles in modeling high dimensional ...
<div><p>Statistical inference can be over optimistic and even misleading based on a selected model d...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
<p>The correlations are based on cross-validations, where the last column stands for an overall calc...
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
Global sensitivity analysis (GSA) is a valuable tool for filtering out non-influential model inputs....
The Gaussian rank correlation equals the usual correlation coefficient computed from the normal scor...
We propose a novel statistic to test the rank of a matrix. The rank statistic overcomes deficiencies...
A variable screening procedure via correlation learning was proposed by Fan and Lv (2008) to reduce ...
To accommodate the heterogeneity that is often present in ultrahigh-dimensional data, we pro-pose a ...
This work is concerned with marginal sure independence feature screening for ultrahigh dimensional d...
Quantile regression is a flexible approach to assessing covariate effects on failure time, which has...