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Alternative Approaches to Estimation and Inference in Large Multifactor Panels: Small Sample Results with an Application to Modelling of Asset Returns

机译:大型多因素面板中的估计和推断的替代方法:小样本结果及其在资产收益建模中的应用

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摘要

This paper considers alternative approaches to the analysis of large panel data models in the presence of error cross section dependence. A popular method for modelling such dependence uses a factor error structure. Such models raise new problems for estimation and inference. This paper compares two alternative methods for carrying out estimation and inference in panels with a multifactor error structure. One uses the correlated common effects estimator that proxies the unobserved factors by cross section averages of the observed variables as suggested by Pesaran (2004) , and the other uses principal components following the work of Stock and Watson (2002) . The paper develops the principal component method and provides small sample evidence on the comparative properties of these estimators by means of extensive Monte Carlo experiments. An empirical application to company returns provides an illustration of the alternative estimation procedures.
机译:本文考虑在存在误差横截面依赖性的情况下分析大型面板数据模型的替代方法。建模这种依赖关系的一种流行方法是使用因子误差结构。这样的模型提出了新的估计和推断问题。本文比较了在具有多因素误差结构的面板中进行估计和推断的两种替代方法。一种方法是使用相关的共同效应估计量,该方法通过Pesaran(2004)建议的观察变量的横截面平均值来替代未观察到的因子,另一种方法是使用遵循Stock和Watson(2002)的主要成分。本文开发了主成分方法,并通过广泛的蒙特卡洛实验提供了这些估计量的比较性质的小样本证据。对公司退货的经验应用提供了替代估计程序的说明。

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