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Detecting the Most Important Classes from Software Systems with Self Organizing Maps
2021
Studia Universitatis Babes-Bolyai: Series Informatica
Self Organizing Maps (SOM) are unsupervised neural networks suited for visualisation purposes and clustering analysis. This study uses SOM to solve a software engineering problem: detecting the most important (key) classes from software projects. Key classes are meant to link the most valuable concepts of a software system and in general these are found in the solution documentation. UML models created in the design phase become deprecated in time and tend to be a source of confusion for large
doi:10.24193/subbi.2021.1.04
fatcat:albr3ewgl5c5rl3qzov2nleupe