Modern-day problems in statistics often face the challenge of exploring and analyzing complex non-Euclidean object data that do not conform to vector space structures or operations. Examples of such data objects include covariance matrices, graph Laplacians of networks, and univariate probability distribution functions. In the current contribution a new concurrent regression model is proposed to characterize the time-varying relation between an object in a general metric space (as a response) and a vector in $\reals^p$ (as a predictor), where concepts from Fr\'echet regression is employed. Concurrent regression has been a well-developed area of research for Euclidean predictors and responses, with many important applications for longitudinal studies and functional data. However, there is no such model available so far for general object data as responses. We develop generalized versions of both global least squares regression and locally weighted least squares smoothing in the context of concurrent regression for responses that are situated in general metric spaces and propose estimators that can accommodate sparse and/or irregular designs. Consistency results are demonstrated for sample estimates of appropriate population targets along with the corresponding rates of convergence. The proposed models are illustrated with human mortality data and resting state functional Magnetic Resonance Imaging data (fMRI) as responses.
翻译:统计中的现代问题往往面临探索和分析不符合矢量空间结构或运行的复杂非欧洲元天体数据的挑战,这类数据对象的例子包括共变矩阵、网络的图 Laplacians 和单象体概率分布功能。在目前的贡献中,提议采用一个新的同时回归模型来描述一个物体在一般计量空间(作为回应)和一个矢量(作为预测者)之间的时间分配关系,前者采用Fr\'echet回归的概念。同时回归是欧洲元预测器和反应研究的一个发展良好的领域,有许多重要应用用于纵向研究和功能数据。然而,对于一般物体数据作为反应,目前还没有这种模型。我们开发了全球最小正方形回归和局部加权最小方块平滑动的通用版本,用于在一般计量空间(作为预测者)中同时回归,并提出了能够适应稀疏和/或不正常设计的估计数据。关于适当人口目标的抽样估计结果与功能趋同率的模型正在与磁性数据同步。拟议将模型与磁性数据同步进行对比。