论文标题
具有一般线性结构和不同参数的协方差模型
Covariance Model with General Linear Structure and Divergent Parameters
论文作者
论文摘要
为了估计样本量有限的大协方差矩阵,我们通过采用一般链接函数将连续响应矢量的协方差连接到重量矩阵的线性组合,提出具有一般线性结构(CMGL)的协方差模型。在不假设响应分布的情况下,允许与权重矩阵相关的参数数量差异,我们获得了参数的准最大似然估计器(QMLE)并显示其渐近性能。此外,提出了扩展的贝叶斯信息标准(EBIC)以选择相关的重量矩阵,并证明了EBIC的一致性。在身份链路函数下,我们介绍具有封闭形式的普通最小二乘估计器(OLS)。因此,与QMLE相比,其计算负担减轻了,并且还研究了OLS的理论特性。为了评估链接函数的充分性,我们进一步提出了准类比率测试并获得其限制分布。提出了模拟研究以评估所提出的方法的性能,并通过对美国股票市场的分析来说明广义协方差模型的有用性。
For estimating the large covariance matrix with a limited sample size, we propose the covariance model with general linear structure (CMGL) by employing the general link function to connect the covariance of the continuous response vector to a linear combination of weight matrices. Without assuming the distribution of responses, and allowing the number of parameters associated with weight matrices to diverge, we obtain the quasi-maximum likelihood estimators (QMLE) of parameters and show their asymptotic properties. In addition, an extended Bayesian information criteria (EBIC) is proposed to select relevant weight matrices, and the consistency of EBIC is demonstrated. Under the identity link function, we introduce the ordinary least squares estimator (OLS) that has the closed form. Hence, its computational burden is reduced compared to QMLE, and the theoretical properties of OLS are also investigated. To assess the adequacy of the link function, we further propose the quasi-likelihood ratio test and obtain its limiting distribution. Simulation studies are presented to assess the performance of the proposed methods, and the usefulness of generalized covariance models is illustrated by an analysis of the US stock market.