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Remarks on asymptotic efficient estimation for regression effects in stationary and nonstationary models for panel count data

机译:关于面板计数数据的平稳模型和非平稳模型中回归效应的渐近有效估计的说明

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In a panel count data setup, repeated counts of an individual are assumed to be influenced by the individual’s random effect. Consequently, conditional on the random effect, the repeated responses of the individual are assumed to be serially correlated. Under the assumption that the random effects of the individuals follow a normal distribution, Jowaheer and Sutradhar ( Statist. Probab. Letters 79 (2009) 1928–1934) have demonstrated that the generalized quasi-likelihood (GQL) estimation approach produces more efficient estimates than the so-called generalized method of moments (GMM) approach for both regression effects and the variance component of the normal random effects. For the cases where the distribution of the random effects is unknown, there exist two estimation approaches, namely the conditional maximum likelihood (CML) and instrumental variables based GMM (IVGMM) approaches, for the estimation of the regression effects. The purpose of this paper is to examine the asymptotic efficiency performances of the CML and IVGMM approaches as compared to the GQL approach for the regression estimation. When the covariates are stationary, that is, time independent, it is, however, known that the CML and IVGMM approaches are useless for the regression estimation, whereas the GQL approach does not encounter any such limitations. For the general case, that is, when the covariates are time dependent, the IVGMM approach appears to be computationally expensive and hence it is not included in efficiency comparison. Between the CML and GQL approaches, it is found through exact asymptotic variance calculations that the GQL approach is asymptotically more efficient than the CML approach in estimating the regression effects. This makes the GQL as a unified efficient approach irrespective of the cases whether the panel count data are stationary or nonstationary.
机译:在面板计数数据设置中,假定一个人的重复计数受该人的随机效应的影响。因此,在随机效应的条件下,假定个体的重复响应是串行相关的。在个人的随机效应遵循正态分布的假设下,Jowaheer和Sutradhar(Statist。Probab。Letters 79(2009)1928-1934)证明,广义拟似然(GQL)估计方法比所谓的广义矩量法(GMM),用于回归效应和正常随机效应的方差分量。对于随机效应的分布未知的情况,存在两种估计方法,即条件最大似然(CML)和基于工具变量的GMM(IVGMM)方法,用于估计回归效应。本文的目的是检验与GQL方法进行回归估计相比,CML和IVGMM方法的渐近效率性能。但是,当协变量是平稳的(即与时间无关)时,众所周知,CML和IVGMM方法对回归估计没有用,而GQL方法没有遇到任何此类限制。对于一般情况,也就是说,当协变量与时间相关时,IVGMM方法似乎在计算上很昂贵,因此它不包含在效率比较中。在CML和GQL方法之间,通过精确的渐近方差计算发现,在估计回归效果方面,GQL方法比CML方法渐近有效。无论面板计数数据是固定的还是非固定的,这都使GQL成为统一的有效方法。

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