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First difference maximum likelihood and dynamic panel estimation

机译:一阶差异最大似然法和动态面板估计

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First difference maximum likelihood (FDML) seems an attractive estimation methodology in dynamic panel data modeling because differencing eliminates fixed effects and, in the case of a unit root, differencing transforms the data to stationarity, thereby addressing both incidental parameter problems and the possible effects of nonstationarity. This paper draws attention to certain pathologies that arise in the use of FDML that have gone unnoticed in the literature and that affect both finite sample performance and asymptotics. FDML uses the Gaussian likelihood function for first differenced data and parameter estimation is based on the whole domain over which the log-likelihood is defined. However, extending the domain of the likelihood beyond the stationary region has certain consequences that have a major effect on finite sample and asymptotic performance. First, the extended likelihood is not the true likelihood even in the Gaussian case and it has a finite upper bound of definition. Second, it is often bimodal, and one of its peaks can be so peculiar that numerical maximization of the extended likelihood frequently fails to locate the global maximum. As a result of these pathologies, the FDML estimator is a restricted estimator, numerical implementation is not straightforward and asymptotics are hard to derive in cases where the peculiarity occurs with non-negligible probabilities. The peculiarities in the likelihood are found to be particularly marked in time series with a unit root. In thiscase, the asymptotic distribution of the FDMLE has bounded support and its density is infinite at the upper bound when the time series sample size T ->oo. As the panel width n -> oo the pathology is removed and the limit theory is normal. This result applies even for T fixed and we present an expression for the asymptotic distribution which does not depend on the time dimension. We also show how this limit theory depends on the form of the extended likelihood.
机译:在动态面板数据建模中,一次差分最大似然(FDML)似乎是一种有吸引力的估算方法,因为差分消除了固定的影响,并且在单位根的情况下,差分将数据转换为平稳性,从而解决了偶发参数问题和非平稳性。本文引起人们对使用FDML的某些病理学的关注,这些病理学在文献中并未引起注意,并且会影响有限的样品性能和渐近性。 FDML将高斯似然函数用于第一差分数据,并且参数估计基于定义对数似然性的整个域。但是,将似然域扩展到平稳区域之外会产生某些后果,这对有限样本和渐近性能会产生重大影响。首先,即使在高斯情况下,扩展似然也不是真正的似然,它具有定义的有限上限。其次,它通常是双峰的,其峰值之一可能如此奇特,以至于扩展似然的数值最大化常常无法找到全局最大值。由于这些原因,FDML估计器是一个受限制的估计器,数值实现不是简单明了的,并且在特殊性出现且概率不可忽略的情况下,很难得出渐近性。发现似然性的特殊性在时间序列中以单位根为特色。在这种情况下,当时间序列样本大小T-> oo时,FDMLE的渐近分布具有有限的支持,并且其密度在上限处无限大。当面板宽度n-> oo时,病理被消除,极限理论是正常的。这个结果甚至适用于固定的T,并且我们给出了一个不依赖于时间维度的渐近分布表达式。我们还展示了这种极限理论如何取决于扩展可能性的形式。

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