| breakfast-package | breakfast: Multiple change-point detection and segmentation for data sequences |
| breakfast | breakfast: Multiple change-point detection and segmentation for data sequences |
| hybrid.cpt | Multiple change-point detection in the mean of a vector using a hybrid between the TGUH and Adaptive WBS methods. |
| segment.mean | Multiple change-point detection in the mean of a vector |
| tguh.cpt | Multiple change-point detection in the mean of a vector using the TGUH method |
| tguh.decomp | The Tail-Greedy Unbalanced Haar decomposition of a vector |
| tguh.denoise | Noise removal from Tail-Greedy Unbalanced Haar coefficients via connected thresholding |
| tguh.reconstr | The inverse Tail-Greedy Unbalanced Haar transformation |
| wbs.bic.cpt | Multiple change-point detection in the mean of a vector using the WBS method, with the number of change-points chosen by BIC |
| wbs.cpt | Multiple change-point detection in the mean of a vector using the (Adaptive) WBS method. |
| wbs.K.cpt | Detecting exactly 'K' change-points in the mean of a vector using the Adaptive WBS method |
| wbs.thresh.cpt | Multiple change-point detection in the mean of a vector using the (Adaptive) WBS method, with the number of change-points chosen by thresholding |