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Asymptotic normality in partial linear models based on dependent errors

机译:基于相关误差的部分线性模型的渐近正态性

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In this paper we are concerned with the regression model y(i)=X-i beta+g(t(i))+ V-i (1 <= i <= n) under correlated errors V-i = sigma(i)e(i) and V-i = Sigma(infinity)(j=-infinity)c(j)e(i-j), where the design points (X-i, t(i)) are known and nonrandom, the slope parameter beta and the nonparametric component g are unknown, {e(i),F-i} are martingale differences. For the First case, it is assumed that sigma(2)(i) = f(u(i)), u(i) are known and nonrandom,f is unknown function, we study the issue of asymptotic normality for two different slope estimators: the least squares estimator and the weighted least squares estimator. For the second case, we consider the asymptotic normality of the least squares estimator of beta, Also, the asymptotic normality of the nonparametric estimators of g(.) under the two cases are considered.
机译:在本文中,我们关注回归误差y(i)= Xi beta + g(t(i))+ Vi(1 <= i <= n)下的回归模型Vi = sigma(i)e(i)和Vi = Sigma(infinity)(j = -infinity)c(j)e(ij),其中设计点(Xi,t(i))是已知的并且是非随机的,斜率参数β和非参数分量g是未知的, {e(i),Fi}是mar差异。对于第一种情况,假设sigma(2)(i)= f(u(i)),u(i)是已知的,并且非随机,f是未知函数,我们研究两个不同斜率的渐近正态性问题估计器:最小二乘估计器和加权最小二乘估计器。对于第二种情况,我们考虑β的最小二乘估计量的渐近正态性。此外,还考虑了两种情况下g(。)的非参数估计量的渐近正态性。

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