| breakfast-package | Breakfast: Methods for Fast Multiple Change-point Detection and Estimation |
| breakfast | Methods for fast detection of multiple change-points |
| model.fixednum | Estimate the location of change-points when the number of them is fixed |
| model.gsa | Estimating change-points in the piecewise-constant mean of a noisy data sequence with auto-regressive noise via gappy Schwarz algorithm |
| model.ic | Estimating change-points or change-point-type features in the mean of a noisy data sequence via the strengthened Schwarz information criterion |
| model.lp | Estimating change-points in the piecewise-constant mean of a noisy data sequence via the localised pruning |
| model.sdll | Estimating change-points in the piecewise-constant or piecewise-linear mean of a noisy data sequence via the Steepest Drop to Low Levels method |
| model.thresh | Estimating change-points in the piecewise-constant or piecewise-linear mean of a noisy data sequence via thresholding |
| plot.breakfast.cpts | Change-points estimated by the "breakfast" routine |
| print.breakfast.cpts | Change-points estimated by the "breakfast" routine |
| print.cptmodel | Change-points estimated by solution path generation + model selection methods |
| sol.idetect | Solution path generation via the Isolate-Detect method |
| sol.idetect_seq | Solution path generation using the sequential approach of the Isolate-Detect method |
| sol.not | Solution path generation via the Narrowest-Over-Threshold method |
| sol.tguh | Solution path generation via the Tail-Greedy Unbalanced Haar method |
| sol.wbs | Solution path generation via the Wild Binary Segmentation method |
| sol.wbs2 | Solution path generation via the Wild Binary Segmentation 2 method |
| sol.wcm | Solution path generation via the Wild Contrast Maximisation method |