2021-04-122019-01-011865092918650937WOS;000525351100023SCOPUS;2-s2.0-85075665935http://hdl.handle.net/10784/27813Visualizing the cluster structure of high-dimensional data is a non-trivial task that must be able to deal with the large dimensionality of the input data. Unlike hard clustering structures, visualization of fuzzy clusterings is not as straightforward because soft clustering algorithms yield more complex clustering structures. Here is introduced the concept of membership networks, an undirected weighted network constructed based on the fuzzy partition matrix that represents a fuzzy clustering. This simple network-based method allows understanding visually how elements involved in this kind of complex data clustering structures interact with each other, without relying on a visualization of the input data themselves. Experiment results demonstrated the usefulness of the proposed method for the exploration and analysis of clustering structures on the Iris flower data set and two large and unlabeled financial datasets, which describes the financial profile of customers of a local bank. © 2019, Springer Nature Switzerland AG.enghttps://v2.sherpa.ac.uk/id/publication/issn/1865-0929Memberships Networks for High-Dimensional Fuzzy Clustering VisualizationarticleCluster analysisComplex networksData visualizationFuzzy clusteringInput output programsLarge datasetVisualizationCluster structureFinancial profilesHard clusteringHigh dimensional dataHigh-dimensionalNon-trivial tasksSimple networksWeighted networksClustering algorithms2021-04-12Ariza-Jiménez L.Villa L.F.Quintero O.L.10.1007/978-3-030-31019-6_23