Abstract
In this paper, a partially linear varying-coefficient model with measurement errors in the nonparametric component as well as missing response variable is studied. Two estimators for the parameter vector and nonparametric function are proposed based on the locally corrected profile least squares method. The first estimator is constructed by using the complete-case data only, and another by using an imputation technique. Both proposed estimators of the parametric component are shown to be asymptotically normal, and the estimators of nonparametric function are proved to achieve the optimal strong convergence rate as the usual nonparametric regression. Some simulation studies are conducted to compare the behavior of these estimators and the results confirm that the estimators based on the imputation technique perform better than the complete-case data estimator in finite samples. Finally, an application to a real data set is illustrated.



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Acknowledgements
This work was supported by the National Natural Science Foundation of China (Nos. 11601419, 11801438).
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Appendix: Proofs of the main results
Appendix: Proofs of the main results
We begin with the following assumption conditions required to derive the main results. These conditions are quite mild and can be easily satisfied.
C1: The random variable u has a bounded support \(\Pi \). Its probability density function f(.) is Lipschitz continuous and bounded away from 0 on its support.
C2: The \(q\times q\) matrix \(\mathrm{E}(\mathbf{ZZ} ^T|U)\) and \(\mathrm{E}(\delta \mathbf{ZZ} ^T|U)\) are nonsingular for each \(U\in \Pi \). The matrix \(\mathrm{E}(\mathbf{ZZ} ^T|U)\), \(\mathrm{E}(\mathbf{ZZ} ^T|U)^{-1}\), \(\mathrm{E}(\delta \mathbf{ZZ} ^T|U)\), \(\mathrm{E}(\delta \mathbf{ZZ} ^T|U)^{-1}\), \(\mathrm{E}(\mathbf{ZX} ^T|U)\) and \(\mathrm{E}(\delta \mathbf{ZX} ^T|U)\) are all Lipschitz continuous.
C3: There exists an \(s>0\) such that \(\mathrm{E}||\mathbf{X} ||^{2s}<\infty \),\(\mathrm{E}||\mathbf{Z} ||^{2s}<\infty \) and for some \(k<2-s^{-1}\) such that \(n^{2k-1}h\longrightarrow \infty .\)
C4: \(\alpha _j(u),j=1,\ldots ,q\) have continuous second derivative for \(u\in \Pi \).
C5: The Kernel K(.) is a symmetric probability density function with compact support and the bandwidth h satisfies \(nh^8\longrightarrow 0\) and \(nh^2/(\mathrm{log} n)^2\longrightarrow \infty \) when \(n\longrightarrow \infty \).
In order to prove the main results, we first give several Lemmas. The following notations will be used in the proof of the Lemmas and Theorems. Let \(c_n=(\mathrm{log}n/nh)^{1/2}\), \(\mu _i=\int _0^{\infty } t^i K(t)\mathrm{d}t\), \(\mathbf{M} =[\mathbf{Z} _1^T\varvec{\alpha }(U_1),\dots ,\mathbf{Z} _n^T\varvec{\alpha }(U_n)]^T\), \(\mathbf{M} ^\mathbf{W }=[\mathbf{W} _1^T\varvec{\alpha }(U_1),\ldots ,\mathbf{W} _n^T\varvec{\alpha }(U_n)]^T\), \(\tilde{\varepsilon }_i={\varepsilon }_i-\sum _{k=1}^n \mathbf{S} _{ik}^{c} \varepsilon _k\) and \(\tilde{\mathbf{Z }}_i=\mathbf{Z }_i-\sum _{k=1}^n \mathbf{S} _{ik}^{c} \mathbf{Z} _k.\)
Lemma 1
Suppose that conditions C1–C5 hold. Then the followings hold uniformly
Proof
Equations (20) and (21) are given in Lemma 2 in Feng and Xue (2014). Similarly, Eqs. (22) and (23) can also be obtained.
Lemma 2
Suppose that conditions C1–C5 hold. Then
where \(\varvec{\Sigma _1}\) is defined in Theorem 1, \(\varvec{\Sigma }\) and \(\varvec{\Sigma }_2\) are defined in Theorem 3.
Proof
The proof of this Lemma is similar to that of Lemma 7.2 in Fan and Huang (2005). Hence, the details are omitted.
Proof of Theorem 1
Let
and
Then,
For \(A_n\), by simple calculation and similar proof of Lemma 4 in Feng and Xue (2014), we have
It is easy to see that \(\mathbf{G} _i\) is independent and identical distributed with mean zero and \(\mathrm {Cov}(\mathbf{G} _i)=\varvec{\Omega }_1.\)
Thus, by the Slutsky theorem, Lemma 2 and the central limit theorem, we complete the Theorem.
Proof of Theorem 2
By the definition of \(\hat{\varvec{\alpha }}_c(u)\), we can obtain that
By Theorem 1, similar to the proof of Theorem 3.1 in Xia and Li (1999), it is easy to show that
Let \(h_1=cn^{-1/5}\), where c is a constant. Then it yields that
Proof of Theorem 3
Similar to Theorem 1, it can be shown that
where
and

For convenience, we denote \([\mathbf{S} _c(\mathbf{A} )]_i\) and \([\mathbf{S} _I(\mathbf{A} )]_i\) to respectively be the ith row of product of \(\mathbf{S} _c \mathbf{A} \) and \(\mathbf{S} _I\mathbf{A} \) for a given matrix \(\mathbf{A} \).
By simple calculation, it is obtained that

By Lemma 1, we have
In view of Theorem 1 and the law of large numbers, it follows that
where \(\mathbf{G} _i\) is defined in Theorem 1.
\(I_3\) can be written as
By Lemma 1, it can be shown that
In a similar way, we obtain that,
Therefor,
\(I_4\) can be expressed as
where \(\hat{\mathbf{M }}_c^\mathbf{W }=[\mathbf{W} _1^T\hat{\varvec{\alpha }}_c(U_1),\ldots ,\mathbf{W} _n^T\hat{\varvec{\alpha }}_c(U_n)]^T\). By Lemma 1, it can be shown that \(I_{41}=o_p(1)\) and \(I_{42}=o_p(1)\). By the fact that \(\hat{\varvec{\beta }}_c-\varvec{\beta }=O_p(n^{-1/2})\) from Theorem 1 and \(\frac{1}{{ n}}\sum _{i=1}^{n}\bar{\mathbf{X }}_i[\mathbf{S} _I(\mathbf{X} )]_i=o_p(1)\), \(I_{43}=o_p(1)\) is obtained. \(I_{44}=o_p(1)\) can also be proved similarly. Thus, we have
Similar to the calculation of \(I_4\), we can show that
Invoking (26)–(31), it can be obtained that
Thus, by the Slutsky theorem, Lemma 2 and the central limit theorem, we concludes the theorem.
Proof of Theorem 4
The proof of Theorem 4 is similar to Theorem 2, then, we omit it.
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Xiao, YT., Li, FX. Estimation in partially linear varying-coefficient errors-in-variables models with missing response variables. Comput Stat 35, 1637–1658 (2020). https://doi.org/10.1007/s00180-020-00967-3
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DOI: https://doi.org/10.1007/s00180-020-00967-3