Bernard, JürgenJürgenBernardLandesberger, Tatiana vonTatiana vonLandesbergerBremm, SebastianSebastianBremmSchreck, TobiasTobiasSchreck2022-03-112022-03-112010https://publica.fraunhofer.de/handle/publica/36772010.1109/VAST.2010.5651676The Self-Organizing Map (SOM) algorithm is a popular and widely used cluster algorithm. Its constraint to organize clusters on a grid structure makes it very amenable to visualization. On the other hand, the grid constraint may lead to reduced cluster accuracy and reliability, compared to other clustering methods not implementing this restriction. We propose a visual cluster analysis system that allows to validate the output of the SOM algorithm by comparison with alternative clustering methods. Specifically, visual mappings overlaying alternative clustering results onto the SOM are proposed. We apply our system on an example data set, and outline main analytical use cases.envisual analyticcluster analysisself-organizing Maps (SOM)quality measurementForschungsgruppe Visual Search and Analysis (VISA)006Cluster correspondence views for enhanced analysis of SOM displaysconference paper