This work investigates multiple testing by considering minimax separation rates in the sparse sequence model, when the testing risk is measured as the sum FDR+FNR (False Discovery Rate plus False Negative Rate). First using the popular beta-min separation condition, with all nonzero signals separated from $0$ by at least some amount, we determine the sharp minimax testing risk asymptotically and thereby explicitly describe the transition from "achievable multiple testing with vanishing risk" to "impossible multiple testing". Adaptive multiple testing procedures achieving the corresponding optimal boundary are provided: the Benjamini--Hochberg procedure with a properly tuned level, and an empirical Bayes $\ell$-value (`local FDR') procedure....
A signal recovery problem is considered, where the same binary testing problem is posed over multipl...
We propose a novel nonparametric two-sample test based on the Maximum Mean Discrepancy (MMD), which ...
In this thesis, we study the sparse mixture detection problem as a binary hypothesis testing problem...
This paper investigates the multiple testing problem for high-dimensional sparse binary sequences, m...
Based on two independent samples $X_1, ...,X_m$ and $X_m+1, ...,X_n$ drawn from multivariate distrib...
Based on two independent samples $X_1, ...,X_m$ and $X_m+1, ...,X_n$ drawn from multivariate distrib...
We consider multiple testing means of many dependent Normal random variables that do not necessarily...
We show that two procedures for false discovery rate (FDR) control -- the Benjamini-Yekutieli proced...
to appear in Annals of StatisticsInternational audienceStarting from a parallel between some minimax...
to appear in Annals of StatisticsInternational audienceStarting from a parallel between some minimax...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A common feature in large-scale scientific studies is that signals are sparse and it is desirable to...
A common feature in large-scale scientific studies is that signals are sparse and it is desirable to...
We consider a multiple testing scenario encountered in the biological sciences and elsewhere: there ...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A signal recovery problem is considered, where the same binary testing problem is posed over multipl...
We propose a novel nonparametric two-sample test based on the Maximum Mean Discrepancy (MMD), which ...
In this thesis, we study the sparse mixture detection problem as a binary hypothesis testing problem...
This paper investigates the multiple testing problem for high-dimensional sparse binary sequences, m...
Based on two independent samples $X_1, ...,X_m$ and $X_m+1, ...,X_n$ drawn from multivariate distrib...
Based on two independent samples $X_1, ...,X_m$ and $X_m+1, ...,X_n$ drawn from multivariate distrib...
We consider multiple testing means of many dependent Normal random variables that do not necessarily...
We show that two procedures for false discovery rate (FDR) control -- the Benjamini-Yekutieli proced...
to appear in Annals of StatisticsInternational audienceStarting from a parallel between some minimax...
to appear in Annals of StatisticsInternational audienceStarting from a parallel between some minimax...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A common feature in large-scale scientific studies is that signals are sparse and it is desirable to...
A common feature in large-scale scientific studies is that signals are sparse and it is desirable to...
We consider a multiple testing scenario encountered in the biological sciences and elsewhere: there ...
Multiple testing, a situation where multiple hypothesis tests are performed simultaneously, is a cor...
A signal recovery problem is considered, where the same binary testing problem is posed over multipl...
We propose a novel nonparametric two-sample test based on the Maximum Mean Discrepancy (MMD), which ...
In this thesis, we study the sparse mixture detection problem as a binary hypothesis testing problem...