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On factor models with random missing: EM estimation, inference, and cross validation

机译:关于随机缺失的因子模型:EM估计,推理和交叉验证

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摘要

We consider the estimation and inference in approximate factor models with random missing values. We show that with the low rank structure of the common component, we can estimate the factors and factor loadings consistently with the missing values replaced by zeros. We establish the asymptotic distributions of the resulting estimators and those based on the EM algorithm. We also propose a cross-validation-based method to determine the number of factors in factor models with or without missing values and justify its consistency. Simulations demonstrate that our cross validation method is robust to fat tails in the error distribution and significantly outperforms some existing popular methods in terms of correct percentage in determining the number of factors. An application to the factor-augmented regression models shows that a proper treatment of the missing values can improve the out-of-sample forecast of some macroeconomic variables. (C) 2020 Elsevier B.V. All rights reserved.
机译:我们考虑具有随机缺失值的近似因子模型的估计和推断。我们证明,在公共分量的低秩结构下,我们可以用零替换的缺失值一致地估计因子和因子载荷。我们建立了所得估计量和基于EM算法的估计量的渐近分布。我们还提出了一种基于交叉验证的方法来确定因子模型中有无缺失值的因子数量,并证明其一致性。仿真结果表明,我们的交叉验证方法对误差分布中的厚尾具有鲁棒性,并且在确定因子数量的正确百分比方面显著优于一些现有的流行方法。对因子增强回归模型的应用表明,适当处理缺失值可以改善某些宏观经济变量的样本外预测。(C) 2020爱思唯尔B.V.版权所有。

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