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Penalized maximum likelihood estimation of a stochastic multivariate regression model

机译:随机多元回归模型的惩罚最大似然估计

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摘要

We study the large-sample properties of the penalized maximum likelihood estimator of a multivariate stochastic regression model with contemporaneously correlated data. The penalty is in terms of the square norm of some (vector) linear function of the regression coefficients. The model subsumes the so-called common transfer function model useful for extracting common signals in a panel of short time series. We show that, under mild regularity conditions, the penalized maximum likelihood estimator is consistent and asymptotically normal. The asymptotic bias of the regression coefficient estimator is also derived.
机译:我们研究了同时相关数据的多元随机回归模型的惩罚最大似然估计的大样本性质。惩罚是根据回归系数的某些(向量)线性函数的平方范数进行的。该模型包含所谓的公共传递函数模型,该模型可用于在短时间序列的面板中提取公共信号。我们表明,在轻度规律性条件下,被惩罚的最大似然估计是一致的并且渐近是正常的。还推导了回归系数估计器的渐近偏差。

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