Conditional regression for the Nonlinear Single-Variable Model
Yantao Wu, Mauro Maggioni

TL;DR
This paper introduces a nonparametric conditional regression method for a nonlinear single-variable model, achieving near-optimal rates and computational efficiency in high dimensions with unknown curve structures.
Contribution
It proposes a novel estimator for a nonlinear single-index model based on conditional regression, handling unknown curves and functions with near-optimal rates and polynomial complexity.
Findings
Achieves one-dimensional optimal min-max regression rate.
Handles unknown curve and function structures.
Computational complexity is polynomial in data dimension.
Abstract
Regressing a function on without the statistical and computational curse of dimensionality requires special statistical models, for example that impose geometric assumptions on the distribution of the data (e.g., that its support is low-dimensional), or strong smoothness assumptions on , or a special structure . Among the latter, compositional models with mapping to with include classical single- and multi-index models, as well as neural networks. While the case where is linear is well-understood, less is known when is nonlinear, and in particular for which 's the curse of dimensionality in estimating , or both and , may be circumvented. Here we consider a model where is the closest-point projection onto the parameter of a…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Fault Detection and Control Systems
