The Minimax Rate of HSIC Estimation for Translation-Invariant Kernels

Neural Information Processing Systems 

Kernel techniques are among the most influential approaches in data science and statistics. Under mild conditions, the reproducing kernel Hilbert space associated to a kernel is capable of encoding the independence of M 2 random variables. Probably the most widespread independence measure relying on kernels is the socalled Hilbert-Schmidt independence criterion (HSIC; also referred to as distance covariance in the statistics literature). Despite various existing HSIC estimators designed since its introduction close to two decades ago, the fundamental question of the rate at which HSIC can be estimated is still open.