tedana.decomposition.ica.r_ica
- r_ica(data, n_components, fixed_seed, n_robust_runs, max_it, n_threads=1)[source]
Perform robustica on data and returns mixing matrix.
- Parameters:
data ((Mc x T)
numpy.ndarray) – Dimensionally reduced optimally combined functional data, where S is samples in classification mask, T is timen_components (
int) – Number of components retained from PCA decomposition.fixed_seed (
int) – Seed for ensuring reproducibility of ICA results.n_robust_runs (
int) – selected number of robust runs when robustica is used. Default is 30.maxit (
int, optional) – Maximum number of iterations for ICA. Default is 500.n_threads (
int, optional) – Number of threads to use for parallel computation. Default is 1.
- Returns:
mixing ((T x C)
numpy.ndarray) – Z-scored mixing matrix for converting input data to component space, where C is components and T is the same as in datafixed_seed (
int) – Random seed from final decomposition.c_labels ((n_pca_components x n_robust_runs,)
numpy.ndarray) – A one dimensional array that has the cluster label of each run.similarity_t_sne ((n_pca_components x n_robust_runs,2)
numpy.ndarray) – An array containing the 2D coordinates of projected data.fastica_convergence_warning_count (
int) – The number of iterations of fastICA that failed to converge.index_quality (
float) – The mean cluster index quality for robustICA. robustICA cites https://doi.org/10.1109/NNSP.2003.1318025 for the measure