Clustering and Distances
distm | Distance matrix between two data sets. | more routines |
emclust | Expectation – maximization clustering | |
proxm | Proximity mapping and kernel construction | |
hclust | Hierarchical clustering | |
kcentres | k-centres clustering | |
kmeans | k-means clustering | |
modeseek | Clustering by modeseeking | |
mds | Non-linear mapping by multi-dimensional scaling (Sammon) | |
mds_cs | Linear mapping by classical scaling | |
mds_init | Initialisation of multi-dimensional scaling | |
mds_stress | Dissimilarity of distance matrices |
elements:
datasets
datafiles
cells and doubles
mappings
classifiers
mapping types.
operations:
datasets
datafiles
cells and doubles
mappings
classifiers
stacked
parallel
sequential
dyadic.
user commands:
datasets
representation
classifiers
evaluation
clustering
examples
support routines.
introductory examples:
Introduction
Scatterplots
Datasets
Datafiles
Mappings
Classifiers
Evaluation
Learning curves
Feature curves
Dimension reduction
Combining classifiers
Dissimilarities.
advanced examples.