bootcluster - Bootstrapping Estimates of Clustering Stability
Implementation of the bootstrapping approach for the
estimation of clustering stability and its application in
estimating the number of clusters, as introduced by Yu et al
(2016)<doi:10.1142/9789814749411_0007>. Implementation of the
non-parametric bootstrap approach to assessing the stability of
module detection in a graph, the extension for the selection of
a parameter set that defines a graph from data in a way that
optimizes stability and the corresponding visualization
functions, as introduced by Tian et al (2021)
<doi:10.1002/sam.11495>. Implemented out-of-bag stability
estimation function and k-select Smin-based k-selection
function as introduced by Liu et al (2022)
<doi:10.1002/sam.11593>. Implemented ensemble clustering method
based-on k-means clustering method, spectral clustering method
and hierarchical clustering method.