| Literature DB >> 26924939 |
Huitong Qiu1, Fang Han1, Han Liu2, Brian Caffo1.
Abstract
In this manuscript we consider the problem of jointly estimating multiple graphical models in high dimensions. We assume that the data are collected from n subjects, each of which consists of T possibly dependent observations. The graphical models of subjects vary, but are assumed to change smoothly corresponding to a measure of closeness between subjects. We propose a kernel based method for jointly estimating all graphical models. Theoretically, under a double asymptotic framework, where both (T, n) and the dimension d can increase, we provide the explicit rate of convergence in parameter estimation. It characterizes the strength one can borrow across different individuals and the impact of data dependence on parameter estimation. Empirically, experiments on both synthetic and real resting state functional magnetic resonance imaging (rs-fMRI) data illustrate the effectiveness of the proposed method.Entities:
Keywords: Conditional independence; Graphical model; High dimensional data; Rate of convergence; Time series
Year: 2015 PMID: 26924939 PMCID: PMC4767508 DOI: 10.1111/rssb.12123
Source DB: PubMed Journal: J R Stat Soc Series B Stat Methodol ISSN: 1369-7412 Impact factor: 4.488