Optimal robust mean and location estimation via convex programs with respect to any pseudo-norms
成果类型:
Article
署名作者:
Depersin, Jules; Lecue, Guillaume
署名单位:
Institut Polytechnique de Paris; ENSAE Paris; Ecole Polytechnique
刊物名称:
PROBABILITY THEORY AND RELATED FIELDS
ISSN/ISSBN:
0178-8051
DOI:
10.1007/s00440-022-01127-y
发表日期:
2022
页码:
997-1025
关键词:
Complexity
摘要:
We consider the problem of robust mean and location estimation with respect to any pseudo-norm of the form x is an element of R-d bar right arrow parallel to x parallel to(S) = sup(v is an element of S)< v, x > where S is any symmetric subset of R-d. We show that the deviation-optimal minimax sub-Gaussian rate for confidence 1 - delta is max (l*(Sigma S-1/2)/root N, sup(v is an element of S) parallel to Sigma(1/2)v parallel to(2) root log(1/delta)/N) where l*(Sigma S-1/2) is the Gaussian mean width of Sigma S-1/2 and Sigma the covariance of the data. This improves the entropic minimax lower bound from Lugosi and Mendelson (Probab Theory Relat Fields 175(3-4):957-973, 2019) and closes the gap characterized by Sudakov's inequality between the entropy and the Gaussian mean width for this problem. This shows that the right statistical complexity measure for the mean estimation problem is the Gaussian mean width. We also show that this rate can be achieved by a solution to a convex optimization problem in the adversarial and L-2 heavy-tailed setup by considering minimum of some Fenchel-Legendre transforms constructed using the median-of-means principle. We finally show that this rate may also be achieved in situations where there is not even a first moment but a location parameter exists.