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NONREGULAR and MINIMAX ESTIMATION of INDIVIDUALIZED THRESHOLDS in HIGH DIMENSION with BINARY RESPONSES

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Abstract

Given a large number of covariates Z, we consider the estimation of a high-dimensional parameter in an individualized linear threshold T Z for a continuous variable X, which minimizes the disagreement between sign(X-T Z) and a binary response Y . While the problem can be formulated into the M-estimation framework, minimizing the corresponding empirical risk function is computationally intractable due to discontinuity of the sign function. Moreover, estimating even in the fixed-dimensional setting is known as a nonregular problem leading to nonstandard asymptotic theory. To tackle the computational and theoretical challenges in the estimation of the high-dimensional parameter , we propose an empirical risk minimization approach based on a regularized smoothed non-convex loss function. The Fisher consistency of the proposed method is guaranteed as the bandwidth of the smoothed loss is shrunk to 0. Statistically, we show that the finite sample error bound for estimating in 2 norm is (s log d/n)β/(2β+1), where d is the dimension of , s is the sparsity level, n is the sample size and β is the smoothness of the conditional density of X given the response Y and the covariates Z. The convergence rate is nonstandard and slower than that in the classical Lasso problems. Furthermore, we prove that the resulting estimator is minimax rate optimal up to a logarithmic factor. The Lepski's method is developed to achieve the adaption to the unknown sparsity s or smoothness β. Computationally, an efficient path-following algorithm is proposed to compute the solution path. We show that this algorithm achieves geometric rate of convergence for computing the whole path. Finally, we evaluate the finite sample performance of the proposed estimator in simulation studies and a real data analysis from the ChAMP (Chondral Lesions And Meniscus Procedures) Trial.

Original languageEnglish
Pages (from-to)2284-2305
Number of pages22
JournalAnnals of Statistics
Volume50
Issue number4
DOIs
StatePublished - Aug 2022

Keywords

  • High-dimensional statistics
  • adaptivity
  • kernel method.
  • minimax optimality
  • non-convex optimization
  • nonstandard asymptotics

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