Yi-Ou
Li1, Pratik Mukherjee, Srikantan Nagarajan, Hagai Attias2
1University of
We
apply a new variational Bayesian factor partition (VBFP) method to the sparse
spatiotemporal decomposition of resting state fMRI data. The VBFP method
estimates sources with sparse distributions in both spatial and temporal
domain and incorporates automatic relevance determination in a fully Bayesian
inference framework. Hence it achieves dimension reduction as an integrated
part of the inference. We apply VBFP to the resting state fMRI data and
compare it with a maximum likelihood independent component analysis (