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stream - Infrastructure for Data Stream Mining - R package

The package provides support for modeling and simulating data streams as well as an extensible framework for implementing, interfacing and experimenting with algorithms for various data stream mining tasks. The main advantage of stream is that it seamlessly integrates with the large existing infrastructure provided by R. The package currently focuses on data stream clustering and provides implementations of BICO, BIRCH, D-Stream, DBSTREAM, and evoStream.

Additional packages in the stream family are:

  • streamMOA: Interface to clustering algorithms implemented in the MOA framework. Includes implementations of DenStream, ClusTree and CluStream.

The development of the stream package was supported in part by NSF IIS-0948893 and NIH R21HG005912.

Installation

Stable CRAN version: install from within R with

install.packages("stream")

Current development version: Download package from AppVeyor or install from GitHub (needs devtools).

install_git("mhahsler/stream")

Usage

Load the package and create micro-clusters via sampling.

library("stream")
stream <- DSD_Gaussians(k=3, noise=0)

sample <- DSC_Sample(k=20)
update(sample, stream, 500)
sample
Reservoir sampling
Class: DSC_Sample, DSC_Micro, DSC_R, DSC
Number of micro-clusters: 20

Recluster micro-clusters using k-means and plot results

kmeans <- DSC_Kmeans(k=3)
recluster(kmeans, sample)
plot(kmeans, stream, type="both")

A list of all available clustering methods can be obtained with

DSC_registry$get_entries()

References

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Install

install.packages('stream')

Monthly Downloads

705

Version

1.5-1

License

GPL-3

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Last Published

May 9th, 2022

Functions in stream (1.5-1)