ClustGeo: an R package for hierarchical clustering with spatial constraints

07/12/2017
by   Marie Chavent, et al.
0

In this paper, we propose a Ward-like hierarchical clustering algorithm including spatial/geographical constraints. Two dissimilarity matrices D_0 and D_1 are inputted, along with a mixing parameter α∈ [0,1]. The dissimilarities can be non-Euclidean and the weights of the observations can be non-uniform. The first matrix gives the dissimilarities in the "feature space" and the second matrix gives the dissimilarities in the "constraint space". The criterion minimized at each stage is a convex combination of the homogeneity criterion calculated with D_0 and the homogeneity criterion calculated with D_1. The idea is then to determine a value of α which increases the spatial contiguity without deteriorating too much the quality of the solution based on the variables of interest i.e. those of the feature space. This procedure is illustrated on a real dataset using the R package ClustGeo.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset