Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
8686727 | NeuroImage | 2018 | 16 Pages |
Abstract
Our analyses demonstrate good performance of our VB scheme, with a marked speed-up of model inversion by two orders of magnitude compared to MCMC, while maintaining a similar level of accuracy. Notably, additional acceleration would be possible if parallel computing techniques were applied. Generally, our VB implementation of HUGE is fast enough to support multi-start procedures for whole-group analyses, a useful strategy to ameliorate problems with local extrema. HUGE thus represents a potentially useful practical solution for an important problem in clinical neuromodeling and computational psychiatry, i.e., the unsupervised detection of subgroups in heterogeneous populations that are defined by effective connectivity.
Related Topics
Life Sciences
Neuroscience
Cognitive Neuroscience
Authors
Yu Yao, Sudhir S. Raman, Michael Schiek, Alex Leff, Stefan Frässle, Klaas E. Stephan,