Nature-Inspired Spatial Clustering

Implement and enhance the performance of spatial fuzzy clustering using Fuzzy Geographically Weighted Clustering with various optimization algorithms, mainly from Xin She Yang (2014) with book entitled Nature-Inspired Optimization Algorithms. The optimization algorithm is useful to tackle the disadvantages of clustering inconsistency when using the traditional approach. The distance measurements option is also provided in order to increase the quality of clustering results. The Fuzzy Geographically Weighted Clustering with nature inspired optimisation algorithm was firstly developed by Arie Wahyu Wijayanto and Ayu Purwarianti (2014) using Artificial Bee Colony algorithm.


Reference manual

It appears you don't have a PDF plugin for this browser. You can click here to download the reference manual.


0.2.1 by Bahrul Ilmi Nasution, 6 months ago

Browse source code at

Authors: Bahrul Ilmi Nasution [aut, cre] , Robert Kurniawan [aut] , Rezzy Eko Caraka [aut]

Documentation:   PDF Manual  

GPL-3 license

Imports Rdpack, rdist, stabledist, beepr

Suggests ppclust, spatialClust, cluster, ggplot2

See at CRAN