International audienceThe impact of dependence between individual test statistics is currently among the most discussed topics in the multiple testing of high-dimensional data literature, especially since Benjamini and Hochberg (1995) introduced the false discovery rate (FDR). Many papers have first focused on the impact of dependence on the control of the FDR. Some more recent works have investigated approaches that account for common information shared by all the variables to stabilize the distribution of the error rates. Similarly, we propose to model this sharing of information by a factor analysis structure for the conditional variance of the test statistics. It is shown that the variance of the number of false discoveries increases al...
This paper presents an overview of criteria and methods in multiple testing, with an emphasis on the...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
Large-scale multiple testing with correlated and heavy-tailed data arises in a wide range of researc...
International audienceMultiple testing issues have long been considered almost exclusively in the co...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyMultiple testing research has undergone r...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
Background: We consider effects of dependence among variables of high-dimensional data in multiple h...
Controlling the false discovery rate (FDR) is a powerful approach to multiple testing, with procedur...
Background: The False Discovery Rate (FDR) controls the expected number of false positives among the...
The most popular multiple testing procedures are stepwise procedures based on P-values for individua...
Statistical hypothesis testing is used while analyzing experimental data. This thesis is focused on ...
a practical and powerful Approach to multiple Testing ’ by benjamini et. al.[1] proposes a new frame...
The technical advancements in genomics, functional magnetic-resonance and other areas of scientific ...
Epidemiologic and genetic studies often involve the testing of a large number of hypotheses with tes...
Large-scale multiple testing with correlated and heavy-tailed data arises in a wide range of researc...
This paper presents an overview of criteria and methods in multiple testing, with an emphasis on the...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
Large-scale multiple testing with correlated and heavy-tailed data arises in a wide range of researc...
International audienceMultiple testing issues have long been considered almost exclusively in the co...
Doctor of PhilosophyDepartment of StatisticsGary L. GadburyMultiple testing research has undergone r...
Multiple hypothesis testing is a fundamental problem in high dimensional inference, with wide applic...
Background: We consider effects of dependence among variables of high-dimensional data in multiple h...
Controlling the false discovery rate (FDR) is a powerful approach to multiple testing, with procedur...
Background: The False Discovery Rate (FDR) controls the expected number of false positives among the...
The most popular multiple testing procedures are stepwise procedures based on P-values for individua...
Statistical hypothesis testing is used while analyzing experimental data. This thesis is focused on ...
a practical and powerful Approach to multiple Testing ’ by benjamini et. al.[1] proposes a new frame...
The technical advancements in genomics, functional magnetic-resonance and other areas of scientific ...
Epidemiologic and genetic studies often involve the testing of a large number of hypotheses with tes...
Large-scale multiple testing with correlated and heavy-tailed data arises in a wide range of researc...
This paper presents an overview of criteria and methods in multiple testing, with an emphasis on the...
In the context of multiple hypothesis testing, the proportion p 0 of true null hypotheses in the poo...
Large-scale multiple testing with correlated and heavy-tailed data arises in a wide range of researc...