Sparse Signal Detection in Heteroscedastic Gaussian Sequence Models: Sharp Minimax Rates (2211.08580v4)
Abstract: Given a heterogeneous Gaussian sequence model with unknown mean $\theta \in \mathbb Rd$ and known covariance matrix $\Sigma = \operatorname{diag}(\sigma_12,\dots, \sigma_d2)$, we study the signal detection problem against sparse alternatives, for known sparsity $s$. Namely, we characterize how large $\epsilon*>0$ should be, in order to distinguish with high probability the null hypothesis $\theta=0$ from the alternative composed of $s$-sparse vectors in $\mathbb Rd$, separated from $0$ in $Lt$ norm ($t \in [1,\infty]$) by at least $\epsilon*$. We find minimax upper and lower bounds over the minimax separation radius $\epsilon*$ and prove that they are always matching. We also derive the corresponding minimax tests achieving these bounds. Our results reveal new phase transitions regarding the behavior of $\epsilon*$ with respect to the level of sparsity, to the $Lt$ metric, and to the heteroscedasticity profile of $\Sigma$. In the case of the Euclidean (i.e. $L2$) separation, we bridge the remaining gaps in the literature.