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Identification and inference in a simultaneous equation under alternative information sets and sampling schemes

机译:备选信息集和采样方案下联立方程的识别和推论

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摘要

In simple static linear simultaneous equation models, the empirical distributions of IV and OLS are examined under alternative sampling schemes and compared with their first-order asymptotic approximations. We demonstrate that the limiting distribution of consistent IV is not affected by conditioning on exogenous regressors, whereas that of inconsistent OLS is. The OLS asymptotic and simulated actual variances are shown to diminish by extending the set of exogenous variables kept fixed in sampling, whereas such an extension disrupts the distribution of IV and deteriorates the accuracy of its standard asymptotic approximation, not only when instruments are weak. Against this background, the consequences for the identification of parameters of interest are examined for a setting in which (in practice often incredible) assumptions regarding the zero correlation between instruments and disturbances are replaced by (generally more credible) interval assumptions on the correlation between endogenous regressor and disturbance. This yields OLS-based modified confidence intervals, which are usually conservative, as is established by simulation. Often they compare favourably with IV-based intervals and accentuate their frailty. The latter is demonstrated in an empirical illustration.
机译:在简单的静态线性联立方程模型中,在替代采样方案下检查IV和OLS的经验分布,并将其与一阶渐近近似进行比较。我们证明,一致的IV的有限分布不受外源回归条件的影响,而不一致的OLS受限制。通过扩展在采样中保持固定的外生变量集,OLS渐近和模拟的实际方差已显示出减小,而这种扩展不仅影响仪器,而且不仅破坏了IV的分布,而且还破坏了其标准渐近逼近的准确性。在这种背景下,将在以下情况下检查确定感兴趣参数的结果:在这种情况下,(通常是更可靠的)关于仪器与干扰之间零相关性的假设(在实践中通常是令人难以置信的)由关于内源性之间的相关性的区间假设代替回归器和干扰。这产生了基于OLS的修改后的置信区间,通常是保守的,这是通过仿真确定的。通常,它们与基于IV的间隔相比具有优势,并加剧了其脆弱性。经验证明了后者。

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