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      Nuisance vs. Substance: Specifying and Estimating Time-Series-Cross-Section Models

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      Political Analysis
      Oxford University Press (OUP)

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          Abstract

          In a previous article we showed that ordinary least squares with panel corrected standard errors is superior to the Parks generalized least squares approach to the estimation of time-series-cross-section models. In this article we compare our proposed method with another leading technique, Kmenta's “cross-sectionally heteroskedastic and timewise autocorrelated” model. This estimator uses generalized least squares to correct for both panel heteroskedasticity and temporally correlated errors. We argue that it is best to model dynamics via a lagged dependent variable rather than via serially correlated errors. The lagged dependent variable approach makes it easier for researchers to examine dynamics and allows for natural generalizations in a manner that the serially correlated errors approach does not. We also show that the generalized least squares correction for panel heteroskedasticity is, in general, no improvement over ordinary least squares and is, in the presence of parameter heterogeneity, inferior to it. In the conclusion we present a unified method for analyzing time-series-cross-section data.

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          Efficient Estimation of a System of Regression Equations when Disturbances are Both Serially and Contemporaneously Correlated

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            Comparing Dynamic Specifications: The Case of Presidential Approval

            This article compares a variety of models of presidential approval in terms of their dynamic properties and their theoretical underpinnings. Exponential distributed lags, partial adjustment, error correction, and transfer function models are considered. The major difference between the models lies in interpretation rather than statistical properties. The error correction model seems most satisfactory. Approval models based on individual level theories are examined, and found to give no additional purchase.
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              Bootstrapping a Regression Equation: Some Empirical Results

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                Author and article information

                Journal
                applab
                Political Analysis
                Polit. anal.
                Oxford University Press (OUP)
                1047-1987
                1476-4989
                1996
                January 2017
                : 6
                :
                : 1-36
                Article
                10.1093/pan/6.1.1
                da363fda-085b-4a0c-bdb5-b17195fc92a5
                © 1996
                History

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