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arxiv: 1811.02663 · v1 · pith:TKQUBQXXnew · submitted 2018-11-06 · 🧮 math.ST · stat.TH

Strong consistency of kernel estimator in a semiparametric regression model

classification 🧮 math.ST stat.TH
keywords lambdawidehatciteconditionsestimatorinftyintroducedkernel
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Estimating the effective dimension reduction (EDR) space, related to the semiparametric regression model introduced by Li \cite{sir}, is based on the estimation of the covariance matrix $\Lambda$ of the conditional expectation of the vector of predictors given the response. An estimator $\widehat{\Lambda}_n$ of $\Lambda $ based on kernel method was introduced by Zhu and Fang \cite{Asymptotics} who then derived, under some conditions, the asymptotic distribution of $\sqrt{n}\left(\widehat{\Lambda}_n-\Lambda\right)$, as $n\rightarrow +\infty$. In this paper, we obtain, under specified conditions, the almost sure convergence of $\widehat{\Lambda}_n$ to $\Lambda$, as $n\rightarrow +\infty$.

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