| 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 |