Model Order Selection for Clustering


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Documentation for package ‘mosclust’ version 1.0.2

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mosclust-package Model order selection for clustering
Bernstein.compute.pvalues Function to compute the stability indices and the p-values associated to a set of clusterings according to Bernstein inequality.
Bernstein.ind.compute.pvalues Function to compute the stability indices and the p-values associated to a set of clusterings according to Bernstein inequality.
Bernstein.p.value Function to compute the p-value according to Bernstein inequality.
Chi.square.compute.pvalues Function to compute the stability indices and the p-values associated to a set of clusterings according to the chi-square test between multiple proportions.
Compute.Chi.sq Function to evaluate if a set of similarity distributions significantly differ using the chi square test.
compute.cumulative.multiple Function to compute the empirical cumulative distribution function (ECDF) of the similarity measures.
compute.integral Functions to compute the integral of the ecdf of the similarity values
compute.integral.from.similarity Functions to compute the integral of the ecdf of the similarity values
cumulative.values Function to compute the empirical cumulative distribution function (ECDF) of the similarity measures.
Do.boolean.membership.matrix Function to compute and build up a pairwise boolean membership matrix.
do.similarity.noise Function that computes sets of similarity indices using injection of gaussian noise.
do.similarity.projection Function that computes sets of similarity indices using randomized maps.
do.similarity.resampling Function that computes sets of similarity indices using resampling techniques.
Fuzzy.kmeans.sim.noise Function to compute similarity indices using noise injection techniques and fuzzy c-mean clustering.
Fuzzy.kmeans.sim.projection Function to compute similarity indices using random projections and fuzzy c-mean clustering.
Fuzzy.kmeans.sim.resampling Function to compute similarity indices using resampling techniques and fuzzy c-mean clustering.
Hierarchical.sim.noise Function to compute similarity indices using noise injection techniques and hierarchical clustering.
Hierarchical.sim.projection Function to compute similarity indices using random projections and hierarchical clustering.
Hierarchical.sim.resampling Function to compute similarity indices using resampling techniques and hierarchical clustering.
Hybrid.testing Statistical test based on stability methods for model order selection.
Hypothesis.testing Function to select significant clusterings from a given set of p-values
Intersect Function to compute the intersection between elements of two vectors
Kmeans.sim.noise Function to compute similarity indices using noise injection techniques and kmeans clustering.
Kmeans.sim.projection Function to compute similarity indices using random projections and kmeans clustering.
Kmeans.sim.resampling Function to compute similarity indices using resampling techniques and kmeans clustering.
mosclust Model order selection for clustering
PAM.sim.noise Function to compute similarity indices using noise injection techniques and PAM clustering.
PAM.sim.projection Function to compute similarity indices using random projections and PAM clustering.
PAM.sim.resampling Function to compute similarity indices using resampling techniques and PAM clustering.
perturb.by.noise Function to generate a data set perturbed by noise.
plot_cumulative Function to plot the empirical cumulative distribution function of the similarity values
plot_cumulative.multiple Function to plot the empirical cumulative distribution function of the similarity values
plot_hist.similarity Plotting histograms of similarity measures between clusterings
plot_multiple.hist.similarity Plotting histograms of similarity measures between clusterings
plot_pvalues Function to plot p-values for different tests of hypothesis
sFM Similarity measures between pairs of clusterings
sJaccard Similarity measures between pairs of clusterings
sM Similarity measures between pairs of clusterings