Skripnikov A, Michailidis G
Department of Statistics, University of Florida, 102 Griffin-Floyd Hall P.O. Box 118545 Gainesville, Florida 32611.
Comput Stat Data Anal. 2019 Nov;139:164-177. doi: 10.1016/j.csda.2019.05.007. Epub 2019 May 22.
In a number of applications, one has access to high-dimensional time series data on several related subjects. A motivating application area comes from the neuroimaging field, such as brain fMRI time series data, obtained from various groups of subjects (cases/controls) with a specific neurological disorder. The problem of regularized joint estimation of multiple related Vector Autoregressive (VAR) models is discussed, leveraging a group lasso penalty in addition to a regular lasso one, so as to increase statistical efficiency of the estimates by borrowing strength across the models. A modeling framework is developed that it allows for both group-level and subject-specific effects for related subjects, using a group lasso penalty to estimate the former. An estimation procedure is introduced, whose performance is illustrated on synthetic data and compared to other state-of-the-art methods. Moreover, the proposed approach is employed for the analysis of resting state fMRI data. In particular, a group-level descriptive analysis is conducted for brain inter-regional temporal effects of Attention Deficit Hyperactive Disorder (ADHD) patients as opposed to controls, with the data available from the ADHD-200 Global Competition repository.
在许多应用中,人们可以获取多个相关主体的高维时间序列数据。一个具有启发性的应用领域来自神经成像领域,例如从患有特定神经系统疾病的各类主体(病例/对照)中获取的脑功能磁共振成像(fMRI)时间序列数据。本文讨论了多个相关向量自回归(VAR)模型的正则化联合估计问题,除了常规的套索罚项外,还利用了分组套索罚项,以便通过跨模型借用强度来提高估计的统计效率。开发了一个建模框架,该框架允许对相关主体同时考虑组水平效应和特定主体效应,并使用分组套索罚项来估计前者。引入了一种估计程序,并在合成数据上展示了其性能,并与其他现有最先进方法进行了比较。此外,所提出的方法被用于静息态fMRI数据的分析。特别是,针对注意力缺陷多动障碍(ADHD)患者与对照组相比的大脑区域间时间效应进行了组水平描述性分析,数据来自ADHD - 200全球竞赛库。