Threshold detection under a semiparametric regression model
Linear regression models have been extensively considered in the literature. However, in some practical applications they may not be appropriate all over the range of the covariate. In this paper, a more flexible model is introduced by considering a regression model $Y=r(X)+\varepsilon$ where the re...
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Zusammenfassung: | Linear regression models have been extensively considered in the literature.
However, in some practical applications they may not be appropriate all over
the range of the covariate. In this paper, a more flexible model is introduced
by considering a regression model $Y=r(X)+\varepsilon$ where the regression
function $r(\cdot)$ is assumed to be linear for large values in the domain of
the predictor variable $X$. More precisely, we assume that
$r(x)=\alpha_0+\beta_0 x$ for $x> u_0$, where the value $u_0$ is identified as
the smallest value satisfying such a property. A penalized procedure is
introduced to estimate the threshold $u_0$. The considered proposal focusses on
a semiparametric approach since no parametric model is assumed for the
regression function for values smaller than $u_0$. Consistency properties of
both the threshold estimator and the estimators of $(\alpha_0,\beta_0)$ are
derived, under mild assumptions. Through a numerical study, the small sample
properties of the proposed procedure and the importance of introducing a
penalization are investigated. The analysis of a real data set allows us to
demonstrate the usefulness of the penalized estimators. |
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DOI: | 10.48550/arxiv.2310.18733 |