<p>Independence screening is powerful for variable selection when the number of variables is massive. Commonly used independence screening methods are based on marginal correlations or its variants. When some prior knowledge on a certain important set of variables is available, a natural assessment on the relative importance of the other predictors is their conditional contributions to the response given the known set of variables. This results in conditional sure independence screening (CSIS). CSIS produces a rich family of alternative screening methods by different choices of the conditioning set and can help reduce the number of false positive and false negative selections when covariates are highly correlated. This article proposes and ...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
Conditional variable screening arises when researchers have prior information regarding the importan...
We revisit sure independence screening procedures for variable selection in generalized linear model...
We revisit sure independence screening procedures for variable selection in generalized linear model...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
We propose a method of factor profiled sure independence screening for ultrahigh-dimensional variabl...
Variable screening has been a useful research area that deals with ultrahigh-dimensional data. When ...
<p>Extracting important features from ultra-high dimensional data is one of the primary tasks in sta...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...
Conditional variable screening arises when researchers have prior information regarding the importan...
We revisit sure independence screening procedures for variable selection in generalized linear model...
We revisit sure independence screening procedures for variable selection in generalized linear model...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
We propose a method of factor profiled sure independence screening for ultrahigh-dimensional variabl...
Variable screening has been a useful research area that deals with ultrahigh-dimensional data. When ...
<p>Extracting important features from ultra-high dimensional data is one of the primary tasks in sta...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
Wepropose amethod of factor profiled sure independence screening for ultrahigh-dimensional variable ...
High-dimensional data are widely encountered in a great variety of areas such as bioinformatics, med...