simpeg.utils.GaussianMixtureWithPrior.score_samples_with_sensW#
- GaussianMixtureWithPrior.score_samples_with_sensW(X, sensW)[source]#
- Compute the weighted log probabilities for each sample. - [New function, modified from Scikit-Learn.mixture.gaussian_mixture.score_samples] Compute the weighted log probabilities for each sample. - Parameters:
- X(n_samples,n_features) array_like
- List of n_features-dimensional data points. Each row corresponds to a single data point. 
- sensW(n_samples) array_like
- Sensitivity weights 
 
- X(
- Returns:
- (n_samples)numpy.array
- Log probabilities of each data point in X. 
 
- (
 
