The Full Landscape of Robust Mean Testing: Sharp Separations between Oblivious and Adaptive Contamination
Abstract: We consider the question of Gaussian mean testing, a fundamental task in high-dimensional distribution testing and signal processing, subject to adversarial corruptions of the samples. We focus on the relative power of different adversaries, and show that, in contrast to the common wisdom in robust statistics, there exists a strict separation between adaptive adversaries (strong contamination) and oblivious ones (weak contamination) for this task. We design both new testing algorithms and new lower bounds to show that robust testing…