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Efficient estimation of approximate factor models via penalized maximum likelihood

机译:通过惩罚最大似然有效估计近似因子模型

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摘要

We study an approximate factor model in the presence of both cross sectional dependence and heteroskedasticity. For efficient estimations it is essential to estimate a large error covariance matrix. We estimate the common factors and factor loadings based on maximizing a Gaussian quasi-likelihood, through penalizing a large covariance sparse matrix. The weighted l(1) penalization is employed. While the principal components (PC) based methods estimate the covariance matrices and individual factors and loadings separately, they require consistent estimation of residual terms. In contrast, the penalized maximum likelihood method (PML) estimates the factor loading parameters and the error covariance matrix jointly. In the numerical studies, we compare PML with the regular PC method, the generalized PC method (Choi 2012) combined with the thresholded covariance matrix estimator (Fan et al. 2013), as well as several related methods, on their estimation and forecast performances. Our numerical studies show that the proposed method performs well in the presence of cross-sectional dependence and heteroskedasticity. (C) 2015 Published by Elsevier B.V.
机译:我们研究了存在横截面依赖性和异方差性的近似因子模型。为了进行有效的估计,必须估计一个较大的误差协方差矩阵。我们通过惩罚一个大的协方差稀疏矩阵,在最大化高斯拟似然的基础上,估计公共因子和因子负荷。采用加权的l(1)惩罚。虽然基于主成分(PC)的方法分别估计协方差矩阵和各个因子以及负荷,但它们需要对残差项进行一致的估计。相反,惩罚最大似然法(PML)联合估计因子加载参数和误差协方差矩阵。在数值研究中,我们将PML与常规PC方法,广义PC方法(Choi 2012)与阈值协方差矩阵估计器(Fan等人,2013)以及几种相关方法进行了比较,评估了它们的预测性能。我们的数值研究表明,该方法在存在截面依赖性和异方差的情况下表现良好。 (C)2015由Elsevier B.V.发布

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