论文标题

验证大面板中的近似斜率同质性

Validating Approximate Slope Homogeneity in Large Panels

论文作者

Kutta, Tim, Dette, Holger

论文摘要

大型数据面板的统计推断在现代经济应用中无所不在。面板分析的一个重要好处是有可能减少噪声,从而确保通过相交池的稳定推断。但是,众所周知,如果单个异质性太强,则汇总会导致偏见分析。在经典的线性面板模型中,这种权衡涉及斜率参数的同质性,并且已经开发了大量的测试来验证这一假设。然而,这样的测试可以检测到与坡度同质性的不大偏差,即使实际上有益,也会阻止汇集。为了允许进行更务实的分析,该分析允许在单个异质性足够小时汇总,我们在本文中提出了近似斜率同质性的概念。我们为此假设开发了渐近水平$α$测试,这与本地替代品类别一致。与现有方法相比,该方法集中于精确的斜率同质性,并且通常对数据依赖性敏感,提出的测试统计量(渐近)是关键的,并且适用于同时的交叉和时间依赖性。此外,它可以容纳具有大交叉点的现实情况。模拟研究和数据示例强调了我们方法的有用性。

Statistical inference for large data panels is omnipresent in modern economic applications. An important benefit of panel analysis is the possibility to reduce noise and thus to guarantee stable inference by intersectional pooling. However, it is wellknown that pooling can lead to a biased analysis if individual heterogeneity is too strong. In classical linear panel models, this trade-off concerns the homogeneity of slope parameters, and a large body of tests has been developed to validate this assumption. Yet, such tests can detect inconsiderable deviations from slope homogeneity, discouraging pooling, even when practically beneficial. In order to permit a more pragmatic analysis, which allows pooling when individual heterogeneity is sufficiently small, we present in this paper the concept of approximate slope homogeneity. We develop an asymptotic level $α$ test for this hypothesis, that is uniformly consistent against classes of local alternatives. In contrast to existing methods, which focus on exact slope homogeneity and are usually sensitive to dependence in the data, the proposed test statistic is (asymptotically) pivotal and applicable under simultaneous intersectional and temporal dependence. Moreover, it can accommodate the realistic case of panels with large intersections. A simulation study and a data example underline the usefulness of our approach.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源