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Estimation and testing for panel data partially linear single-index models with errors correlated in space and time
Author(s) -
Jianqiang Zhao,
YanGang Zhao,
Jin-Guan Lin,
Zhang-Xiao Miao,
Waled Khaled
Publication year - 2019
Publication title -
random matrices : theory and applications
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.513
H-Index - 22
eISSN - 2010-3271
pISSN - 2010-3263
DOI - 10.1142/s2010326321500052
Subject(s) - estimator , mathematics , asymptotic distribution , test statistic , statistics , linear model , nuisance parameter , statistical hypothesis testing
We consider a panel data partially linear single-index models (PDPLSIM) with errors correlated in space and time. A serially correlated error structure is adopted for the correlation in time. We propose using a semiparametric minimum average variance estimation (SMAVE) to obtain estimators for both the parameters and unknown link function. We not only establish an asymptotically normal distribution for the estimators of the parameters in the single index and the linear component of the model, but also obtain an asymptotically normal distribution for the nonparametric local linear estimator of the unknown link function. Then, a fitting of spatial and time-wise correlation structures is investigated. Based on the estimators, we propose a generalized F-type test method to deal with testing problems of index parameters of PDPLSIM with errors correlated in space and time. It is shown that under the null hypothesis, the proposed test statistic follows asymptotically a [Formula: see text]-distribution with the scale constant and degrees of freedom being independent of nuisance parameters or functions. Simulated studies and real data examples have been used to illustrate our proposed methodology.

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