Preface
part i high-dimensional classification
chapter 1 high-dimensional classification jianqing fan, yingying fan and yichao wu
1 introduction
2 elements of classifications
3 impact of dimensionality on classification
4 distance-based classification rules
5 feature selection by independence rule
6 loss-based classification
7 feature selection in loss-based classification
8 multi-category classification
references
chapter 2 flexible large margin classifiers yufeng liu and yichao wu
1 background on classification
2 the support vector machine: the margin formulation and the sv interpretation
3 regularization framework
4 some extensions of the svm: bounded constraint machine and the balancing svm
5 multicategory classifiers
6 probability estimation
7 conclusions and discussions
references
part ii large-scale multiple testing
chapter 3 a compound decision-theoretic approach to large-scale multiple testing
t tony cai and wenguang sun
1 introduction
2 fdr controlling procedures based on p-values
3 oracle and adaptive compound decision rules for fdr control
4 simultaneous testing of grouped hypotheses
5 large-scale multiple testing under dependence
6 open problems
references
part iii model building with variable selection
chapter 4 model building with variable selection ming yuan
1 introduction
2 why variable selection
3 classical approaches
4 bayesian and stochastic search
5 regularization
6 towards more interpretable models
7 further readings
references
chapter 5 bayesian variable selection in regression with networked predictors
feng tai, wei pan and xiaotong shen
1 introduction
2 statistical models
3 estimation
4 results
5 discussion
references
part iv high-dimensional statistics in genomics
chapter 6 high-dimensional statistics in genomics hongzhe li
1 introduction
2 identification of active transcription factors using time-course gene expression data
3 methods for analysis of genomic data with a graphical str
4 statistical methods in eqtl studies
5 discussion and future direction
references
chapter 7 an overview on joint modeling of censored survival time and longitudinal data
runze li and jian-jian ren
1 introduction
2 survival data with longitudinal covariates
3 joint modeling with right censored data
4 joint modeling with interval censored data
5 further studies
references
part v analysis of survival and longitudinal data
chapter 8 survival analysis with high-dimensional covariates bin nan
1 introduction
2 regularized cox regression
3 hierarchically penalized cox regression with grouped variables
4 regularized methods for the accelerated failure time model
5 tuning parameter selection and a concluding remark
references
part vi sufficient dimension reduction in regression
chapter 9 sufficient dimension reduction in regression xiangrong yin
1 introduction
2 sufficient dimension reduction in regression
3 sufficient variable selection (svs)
4 sdr for correlated data and large-p-small-n
5 further discussion
references
chapter 10 combining statistical procedures lihua chen and yuhong yang
1 introduction
2 combining for adaptation
3 combining procedures for improvement
4 concluding remarks
references
subject index
author index