Abstract:
In this talk we'll discuss estimation of the population eigenvectors from a high dimensional
sample covariance matrix, under a low-rank spiked model whose eigenvectors are assumed to be
sparse. We present several models of sparsity, corresponding minimax rates and a procedure that
attains these rates. We'll also discuss some differences between $L_0$ and $L_q$ sparsity for $q > 0$,
as well as some limitations of recently suggested SDP procedures.