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A Survey on Recent Advances in Self-Organizing Maps

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arxiv 2501.08416 v1 pith:QJXFGFJC submitted 2024-12-10 cs.NE cs.AI

A Survey on Recent Advances in Self-Organizing Maps

classification cs.NE cs.AI
keywords applicationbeencontextsdatamapsorderspecificachieved
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Self-organising maps are a powerful tool for cluster analysis in a wide range of data contexts. From the pioneer work of Kohonen, many variants and improvements have been proposed. This review focuses on the last decade, in order to provide an overview of the main evolution of the seminal SOM algorithm as well as of the methodological developments that have been achieved in order to better fit to various application contexts and users' requirements. We also highlight a specific and important application field that is related to commercial use of SOM, which involves specific data management.

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