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Estimation and convergence rates in the distributional single index model

21 October 2023
Qiong Chen
Alexander Henzi
Lukas Looser
ArXiv (abs)PDFHTML
Abstract

The distributional single index model is a semiparametric regression model in which the conditional distribution functions P(Y≤y∣X=x)=F0(θ0(x),y)P(Y \leq y | X = x) = F_0(\theta_0(x), y)P(Y≤y∣X=x)=F0​(θ0​(x),y) of a real-valued outcome variable YYY depend on ddd-dimensional covariates XXX through a univariate, parametric index function θ0(x)\theta_0(x)θ0​(x), and increase stochastically as θ0(x)\theta_0(x)θ0​(x) increases. We propose least squares approaches for the joint estimation of θ0\theta_0θ0​ and F0F_0F0​ in the important case where θ0(x)=α0⊤x\theta_0(x) = \alpha_0^{\top}xθ0​(x)=α0⊤​x and obtain convergence rates of n−1/3n^{-1/3}n−1/3, thereby improving an existing result that gives a rate of n−1/6n^{-1/6}n−1/6. A simulation study indicates that the convergence rate for the estimation of α0\alpha_0α0​ might be faster. Furthermore, we illustrate our methods in a real data application that demonstrates the advantages of shape restrictions in single index models.

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