2024
DOI: 10.1002/hcs2.90
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The novel hierarchical clustering approach using self‐organizing map with optimum dimension selection

Kshitij Tripathi

Abstract: IntroductionData clustering is an important field of machine learning that has applicability in wide areas, like, business analysis, manufacturing, energy, healthcare, traveling, and logistics. A variety of clustering applications have already been developed. Data clustering approaches based on self‐organizing map (SOM) generally use the map dimensions (of the grid) ranging from 2 × 2 to 8 × 8 (4–64 neurons [microclusters]) without any explicit reason for using the particular dimension, and therefore optimized… Show more

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