Examples#
Examples demonstrating connectivity analysis in sensor and source space.
Comparing spectral connectivity computed over time or over trials
Comparison of coherency-based methods
Compute Phase Slope Index (PSI) in source space for a visual stimulus
Compute all-to-all connectivity in sensor space
Compute coherence in source space using a MNE inverse solution
Compute directionality of connectivity with multivariate Granger causality
Compute envelope correlations in source space
Compute envelope correlations in volume source space
Compute full spectrum source space connectivity between labels
Compute mixed source space connectivity and visualize it using a circular graph
Compute multivariate coherency/coherence
Compute multivariate measures of the imaginary part of coherency
Compute seed-based time-frequency connectivity in sensor space
Compute source space connectivity and visualize it using a circular graph
Determine the significance of connectivity estimates against baseline connectivity
Using the connectivity classes
Working with ragged indices for multivariate connectivity
Decoding & Decomposition Examples#
Examples demonstrating multivariate connectivity analysis using the decomposition tools of the decoding module.
Multivariate decomposition for efficient connectivity analysis
Visualising spatial contributions to multivariate connectivity
Dynamic Connectivity Examples#
Examples demonstrating connectivity analysis with dynamics. For example, this can be a vector auto-regressive model (also known as a linear dynamical system). These classes of models are generative and model the dynamics and evolution of the data.
Compute vector autoregressive model (linear system)