Multi-group covariance estimation for matrix-variate data with small within group sample sizes is a key part of many data analysis tasks in modern applications. To obtain accurate group-specific covariance estimates, shrinkage estimation methods which shrink an unstructured, group-specific covariance either across groups towards a pooled covariance or within each group towards a Kronecker structure have been developed. However, in many applications, it is unclear which approach will result in more accurate covariance estimates. In this article, we present a hierarchical prior distribution which flexibly allows for both types of shrinkage. The prior linearly combines shrinkage across groups towards a shared pooled covariance and shrinkage within groups towards a group-specific Kronecker covariance. We illustrate the utility of the proposed prior in speech recognition and an analysis of chemical exposure data.
翻译:现代应用中许多数据分析任务的一个关键部分是,为了获得准确的集团特定共变估计数,已经开发了缩小估计方法,使各组之间或各组内部的无结构、集团特定共变数向集合共变数转变,或缩小各组内部向克龙克尔结构转变,但在许多应用中,尚不清楚哪种方法将得出更准确的共变数估计。在本条中,我们提出了一个先分级分配办法,灵活地允许两种类型的缩小。先前的线性将各组间缩小为各组内部的共变数和缩小为特定组内克龙克尔共同变数。我们说明了在语音识别和分析化学暴露数据方面拟议的先期方法的效用。