Publication Date:
Author(s): Zachary Fisher, Younghoon Kim, Vladas Pipiras, Christopher Crawford, Daniel J. Petrie, Michael D. Hunter, Charles F. Geier
Publisher: Psychology Press Ltd
Publication Type: Academic Journal Article
Journal Title: Multivariate Behavioral Research
Abstract:

How best to model structurally heterogeneous processes is a foundational question in the social, health and behavioral sciences. Recently, Fisher et al. introduced the multi-VAR approach for simultaneously estimating multiple-subject multivariate time series characterized by common and individualizing features using penalized estimation. This approach differs from many popular modeling approaches for multiple-subject time series in that qualitative and quantitative differences in a large number of individual dynamics are well-accommodated. The current work extends the multi-VAR framework to include new adaptive weighting schemes that greatly improve estimation performance. In a small set of simulation studies we compare adaptive multi-VAR with these new penalty weights to common alternative estimators in terms of path recovery and bias. Furthermore, we provide toy examples and code demonstrating the utility of multi-VAR under different heterogeneity regimes using the multivar package for R.