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We study the problem of estimating the mean of an identity covariance Gaussian in the truncated setting, in the regime when the truncation set comes from a low-complexity family C of sets. Specifically, for a fixed but unknown truncation set S Rᵈ, we are given access to samples from the distribution N (, I) truncated to the set S. The goal is to estimate within accuracy >0 in ₂-norm. Our main result is a Statistical Query (SQ) lower bound suggesting a super-polynomial information-computation gap for this task. In more detail, we show that the complexity of any SQ algorithm for this problem is d^poly (1/), even when the class C is simple so that poly (d/) samples information-theoretically suffice. Concretely, our SQ lower bound applies when C is a union of a bounded number of rectangles whose VC dimension and Gaussian surface are small. As a corollary of our construction, it also follows that the complexity of the previously known algorithm for this task is qualitatively best possible.
Diakonikolas et al. (Mon,) studied this question.
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