2024
DOI: 10.1007/s41109-024-00639-x
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Network embedding based on DepDist contraction

Emanuel Dopater,
Eliska Ochodkova,
Milos Kudelka

Abstract: Networks provide an understandable and, in the case of small size, visualizable representation of data, which allows us to obtain essential information about the relationships between pairs of nodes, e.g., their distances. In visualization, networks have an alternative two-dimensional vector representation to which various machine-learning methods can be applied. More generally, networks can be transformed into a low-dimensional space using so-called embedding methods, which bridge the gap between network anal… Show more

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