Sciweavers

BC
2007

Akaike causality in state space

13 years 4 months ago
Akaike causality in state space
We present a new approach of explaining partial causality in multivariate fMRI time series by a state space model. A given single time series can be divided into two noise-driven processes, which comprising a homogeneous process shared among multivariate time series and a particular process refining the homogeneous process. Causality map is drawn using Akaike noise contribution ratio theory, by assuming that noises are independent. The method is illustrated by an application to fMRI data recorded under visual stimulus.
Kin Foon Kevin Wong, Tohru Ozaki
Added 08 Dec 2010
Updated 08 Dec 2010
Type Journal
Year 2007
Where BC
Authors Kin Foon Kevin Wong, Tohru Ozaki
Comments (0)