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Introduction

ADPclust (Fast Clustering Using Adaptive Density Peak Detection) is a non-iterative procedure that clusters high dimensional data by finding cluster centers from estimated density peaks. It incorporates multivariate local Gaussian density estimation. The number of clusters as well as bandwidths can either be selected by the user or selected automatically through an internal clustering criterion.

Most recent version: 0.6.5

References

Installation

Install the most recent version from github:

## In R do:
## Skip this line if you already have devtools installed
install.packages("devtools")
library(devtools)
install_github("ethanyxu/ADPclust")
library(ADPclust)

OR install the released version from CRAN

## In R do:
install.packages("ADPclust")
library(ADPclust)

Simple Examples

Run on a preloaded data set:

library(ADPclust)
data(clust3)
# Automatic clustering
ans <- adpclust(clust3)
plot(ans)
summary(ans)

# Manual centroids selection
adpclust(clust3, centroids = "user")

For more examples please see the Vignette.

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.