pyls.structures.PLSBootResults¶
- class pyls.structures.PLSBootResults(**kwargs)[source]¶
Dictionary-like object containing results of PLS bootstrap resampling
- x_weights_normed¶
x_weights normalized by their standard error, obtained from bootstrap resampling (see x_weights_stderr)
- Type
(B, L) numpy.ndarray
- x_weights_stderr¶
Standard error of x_weights, used to generate x_weights_normed
- Type
(B, L) numpy.ndarray
- y_loadings¶
Covariance of features in Y with projected x_scores; not available with
meancentered_pls()- Type
(J, L) numpy.ndarray
- y_loadings_boot¶
Distribution of y_loadings across all bootstrap resamples; not available with
meancentered_pls()- Type
(J, L, R) numpy.ndarray
- y_loadings_ci¶
Lower (…, 0) and upper (…, 1) bounds of confidence interval for y_loadings; not available with
meancentered_pls()- Type
(J, L, 2) numpy.ndarray
- contrast¶
Group x condition averages of
brainscores_demeaned. Can be treated as a contrast indicating group x condition differences. Only obtained frommeancentered_pls.- Type
(J, L) numpy.ndarray
- contrast_boot¶
Bootstrapped distribution of contrast; only available with
meancentered_pls()- Type
(J, L, R) numpy.ndarray
- contrast_ci¶
Lower (…, 0) and upper (…, 1) bounds of confidence interval for contrast; only available with
meancentered_pls()- Type
(J, L, 2) numpy.ndarray
- bootsamples¶
Indices of bootstrapped samples S across R resamples.
- Type
(S, R) numpy.ndarray