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首页> 外文期刊>Strategy Science >Interpreting Interactions in Linear Fixed-Effect Regression Models: When Fixed-Effect Estimates Are No Longer With in-Effects
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Interpreting Interactions in Linear Fixed-Effect Regression Models: When Fixed-Effect Estimates Are No Longer With in-Effects

机译:解释线性固定效应回归模型中的相互作用:当固定效应估计不再具有效应时

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摘要

Fixed-effect regression models use within-firm variation to identify coefficient estimates, which is advantageous for mitigating certain endogeneity concerns and ruling out spurious relationships. I demonstrate that fixed-effect regression models with interaction terms (and by extension quadratic or higher-degree terms) confound within-firm and between-firm variation in identifying interaction coefficient estimates. Thus, in these specifications coefficient estimates lack a desirable property of standard fixed-effect estimates.-1 substantiate this concern using simulations and an empirical example. I also demonstrate how segmented regression aids assessing whether withm-firm or between-firm variation identifies interaction coefficient estimates in fixed-effect models.
机译:固定效应回归模型使用公司内部变化来识别系数估计值,这对于减轻某些内生性问题和排除虚假关系是有利的。我证明了具有交互作用项(并通过扩展二次项或更高次项)的固定效应回归模型在识别交互作用系数估计时混淆了公司内部和公司之间的变化。因此,在这些规范中,系数估计值缺乏标准固定效果估计值的理想属性。-1使用模拟和经验示例来证实这种担忧。我还演示了分段回归如何帮助评估企业间差异或企业间差异如何识别固定效应模型中的相互作用系数估计。

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