Learn R Programming

⚠️There's a newer version (2.2-13) of this package.Take me there.

fpc (version 1.2-1)

Fixed point clusters, clusterwise regression and discriminant plots

Description

Fuzzy and crisp fixed point cluster analysis based on Mahalanobis distance and linear regression fixed point clusters. Semi-explorative, semi-model-based clustering methods, operating on n*p data, do not need prespecification of number of clusters, produce overlapping clusters. Symmetric and asymmetric discriminant projections separate groups optimally, used to visualize the separation of groupings, visual cluster validation. Clusterwise linear regression by normal mixture modeling. Cluster validation statistics for distance based clustering. Clusterwise cluster stability assessment. DBSCAN clustering. Interface functions for many clustering methods implemented in R.

Copy Link

Version

Install

install.packages('fpc')

Monthly Downloads

21,008

Version

1.2-1

License

GPL

Maintainer

Christian Hennig

Last Published

September 24th, 2024

Functions in fpc (1.2-1)

ancoord

Asymmetric neighborhood based discriminant coordinates
discrproj

Linear dimension reduction for classification
pamk

Partitioning around medoids with estimation of number of clusters
tdecomp

Root of singularity-corrected eigenvalue decomposition
kmeansruns

k-means clustering with several random initializations
ncoord

Neighborhood based discriminant coordinates
clujaccard

Jaccard similarity between logical vectors
adcoord

Asymmetric discriminant coordinates
wfu

Weight function (for Mahalabobis distances)
dbscan

Clustering: DBSCAN density reachability and connectivity
tonedata

Tone perception data
regmix

Mixture Model ML for Clusterwise Linear Regression
fixreg

Linear Regression Fixed Point Clusters
mahalanodisc

Mahalanobis for AWC
simmatrix

Extracting intersections between clusters from fpc-object
cmahal

Generation of tuning constant for Mahalanobis fixed point clusters.
con.comp

Connectivity components of an undirected graph
minsize

Minimum size of regression fixed point cluster
plotcluster

Discriminant projection plot.
fixmahal

Mahalanobis Fixed Point Clusters
kmeansCBI

Interface functions for clustering methods
randconf

Generate a sample indicator vector
randcmatrix

Random partition matrix
cov.wml

Weighted Covariance Matrices (Maximum Likelihood)
c.weight

Weight function for AWC
rFace

"Face-shaped" clustered benchmark datasets
awcoord

Asymmetric weighted discriminant coordinates
cluster.stats

Cluster validation statistics
sseg

Position in a similarity vector
batcoord

Bhattacharyya discriminant projection
solvecov

Inversion of (possibly singular) symmetric matrices
mahalanofix

Mahalanobis distances from center of indexed points
mahalconf

Mahalanobis fixed point clusters initial configuration
can

Generation of the tuning constant for regression fixed point clusters
itnumber

Number of regression fixed point cluster iterations
mvdcoord

Mean/variance differences discriminant coordinates
clusexpect

Expected value of the number of times a fixed point cluster is found
clusterboot

Clusterwise cluster stability assessment by resampling
fpclusters

Extracting clusters from fixed point cluster objects
discrcoord

Discriminant coordinates/canonical variates