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Covariance estimation in two-level regression

机译:两级回归中的协方差估计

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This paper considers estimation of covariance matrices in multivariate linear regression models for two-level data produced by a population of similar units (individuals). The proposed Bayesian formulation assumes that the covariances for different units are sampled from a common distribution. Assuming that this common distribution is Wishart, the optimal Bayesian estimation problem is shown to be convex. This paper proposes a specialized scalable algorithm for solving this two-level optimal Bayesian estimation problem. The algorithm scales to datasets with thousands of units and trillions of data points per unit, by solving the problem recursively, allowing new data to be quickly incorporated into the estimates. An example problem is used to show that the proposed approach improves over existing approaches to estimating covariance matrices in linear models for two-level data.
机译:本文考虑了由一组相似单位(个人)产生的两级数据的多元线性回归模型中的协方差矩阵估计。提出的贝叶斯公式假设从共同分布中采样了不同单位的协方差。假设此公共分布为Wishart,则最优贝叶斯估计问题被证明是凸的。本文提出了一种专门的可扩展算法来解决该两级最优贝叶斯估计问题。通过递归解决问题,该算法可扩展到具有数千个单位和每个单位数万亿个数据点的数据集,从而可以将新数据快速合并到估计中。使用一个示例问题来表明,所提出的方法相对于现有方法在两级数据的线性模型中估计协方差矩阵方面有所改进。

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