Document Type
Discussion Paper
Publication Date
7-18-2025
CFDP Number
2450
CFDP Pages
42
Abstract
This paper studies the semiparametric estimation and inference of integral functionals on submanifolds, which arise naturally in a variety of econometric settings. For linear integral functionals on a regular submanifold, we show that the semiparametric plugin estimator attains the minimax-optimal convergence rate n—s2s+d-m, where s is the Hölder smoothness order of the underlying nonparametric function, d is the dimension of the first-stage nonparametric estimation, m is the dimension of the submanifold over which the integral is taken. This rate coincides with the standard minimax-optimal rate for a (d − m)-dimensional nonparametric estimation problem, illustrating that integration over the m-dimensional manifold effectively reduces the problem’s dimensionality. We then provide a general asymptotic normality theorem for linear/nonlinear submanifold integrals, along with a consistent variance estimator. We provide simulation evidence in support of our theoretical results.
Recommended Citation
Chen, Xiaohong and Guo, Wayne Yuan, "Semiparametric Learning of Integral Functionals on Submanifolds" (2025). Cowles Foundation Discussion Papers. 2872.
https://elischolar.library.yale.edu/cowles-discussion-paper-series/2872