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clustering.sc.dp (version 1.1)

Optimal Distance-Based Clustering for Multidimensional Data with Sequential Constraint

Description

A dynamic programming algorithm for optimal clustering multidimensional data with sequential constraint. The algorithm minimizes the sum of squares of within-cluster distances. The sequential constraint allows only subsequent items of the input data to form a cluster. The sequential constraint is typically required in clustering data streams or items with time stamps such as video frames, GPS signals of a vehicle, movement data of a person, e-pen data, etc. The algorithm represents an extension of 'Ckmeans.1d.dp' to multiple dimensional spaces. Similarly to the one-dimensional case, the algorithm guarantees optimality and repeatability of clustering. Method clustering.sc.dp() can find the optimal clustering if the number of clusters is known. Otherwise, methods findwithinss.sc.dp() and backtracking.sc.dp() can be used. See Szkaliczki, T. (2016) "clustering.sc.dp: Optimal Clustering with Sequential Constraint by Using Dynamic Programming" for more information.

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Version

Install

install.packages('clustering.sc.dp')

Monthly Downloads

215

Version

1.1

License

LGPL (>= 3)

Maintainer

Tibor Szkaliczki

Last Published

February 10th, 2023

Functions in clustering.sc.dp (1.1)

backtracking.sc.dp

Backtracking Clustering for a Specific Cluster Number
print.clustering.sc.dp

Print the result returned by calling clustering.sc.dp
findwithinss.sc.dp

Finding Optimal Withinss in Clustering Multidimensional Data with Sequential Constraint by Dynamic Programming
clustering.sc.dp

Optimal Clustering Multidimensional Data with Sequential Constraint by Dynamic Programming