A Covariance-on-Covariance regression model is introduced in this manuscript. It is assumed that there exists (at least) a pair of linear projections on outcome covariance matrices and predictor covariance matrices such that a log-linear model links the variances in the projection spaces, as well as additional covariates of interest. An ordinary least square type of estimator is proposed to simultaneously identify the projections and estimate model coefficients. Under regularity conditions, the proposed estimator is asymptotically consistent. The superior performance of the proposed approach over existing methods are demonstrated via simulation studies. Applying to data collected in the Human Connectome Project Aging study, the proposed approach identifies three pairs of brain networks, where functional connectivity within the resting-state network predicts functional connectivity within the corresponding task-state network. The three networks correspond to a global signal network, a task-related network, and a task-unrelated network. The findings are consistent with existing knowledge about brain function.
翻译:本手稿采用了共变共变回归模型,假定(至少)对结果共变矩阵和预测数共变矩阵存在一对线性预测,这样对结果共变矩阵和预测数共变矩阵的线性预测就能够将预测空间的差异以及额外兴趣共变联系起来。建议使用一种普通的最小平方的估测器来同时确定预测和估计模型系数。在正常情况下,提议的估测器是同常态一致的。通过模拟研究来显示拟议方法优于现有方法的优异性能。在人类连通项目老化研究中收集的数据中,拟议办法确定了三对脑网络,其中休息状态网络内的功能连接预测了相应的任务状态网络内的功能连接。三个网络对应的是全球信号网络、任务相关网络和任务无关的网络。研究结果与关于大脑功能的现有知识是一致的。