Background: We consider effects of dependence among variables of high-dimensional data in multiple hypothesis testing problems, in particular the False Discovery Rate (FDR) control procedures. Recent simulation studies consider only simple correlation structures among variables, which is hardly inspired by real data features. Our aim is to systematically study effects of several network features like sparsity and correlation strength by imposing dependence structures among variables using random correlation matrices. Results: We study the robustness against dependence of several FDR procedures that are popular in microarray studies, such as Benjamin-Hochberg FDR, Storey's q-value, SAM and resampling based FDR procedures. False Non-discovery...
The technical advancements in genomics, functional magnetic-resonance and other areas of scientific ...
The false discovery rate (FDR) is a widely used error measure in multiple testing. Adaptive FDR proc...
Multiple testing is a fundamental problem in high-dimensional statistical inference. Although many m...
Background We consider effects of dependence among variables of high-dimensional data in multiple hy...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyMultiple testing research has undergone r...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
International audienceThe impact of dependence between individual test statistics is currently among...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
Controlling false discovery rate (FDR) is a powerful approach to multiple testing. In many applicati...
Controlling the false discovery rate (FDR) is a powerful approach to multiple testing, with procedur...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
This dissertation studies large-scale multiple testing which plays an important role in many areas o...
International audienceMultiple testing issues have long been considered almost exclusively in the co...
The technical advancements in genomics, functional magnetic-resonance and other areas of scientific ...
The false discovery rate (FDR) is a widely used error measure in multiple testing. Adaptive FDR proc...
Multiple testing is a fundamental problem in high-dimensional statistical inference. Although many m...
Background We consider effects of dependence among variables of high-dimensional data in multiple hy...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyMultiple testing research has undergone r...
Hypothesis testing is foundational to the discipline of statistics. Procedures exist which control f...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
International audienceThe impact of dependence between individual test statistics is currently among...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
Controlling false discovery rate (FDR) is a powerful approach to multiple testing. In many applicati...
Controlling the false discovery rate (FDR) is a powerful approach to multiple testing, with procedur...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
In high dimensional data analysis (such as gene expression, spatial epidemiology, or brain imaging s...
This dissertation studies large-scale multiple testing which plays an important role in many areas o...
International audienceMultiple testing issues have long been considered almost exclusively in the co...
The technical advancements in genomics, functional magnetic-resonance and other areas of scientific ...
The false discovery rate (FDR) is a widely used error measure in multiple testing. Adaptive FDR proc...
Multiple testing is a fundamental problem in high-dimensional statistical inference. Although many m...