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TopoDetect: Framework for Topological Features Detection in Graph Embeddings

2021-10-08 14:54:53
Maroun Haddad, Mohamed Bouguessa

Abstract

TopoDetect is a Python package that allows the user to investigate if important topological features, such as the Degree of the nodes, their Triangle Count, or their Local Clustering Score, are preserved in the embeddings of graph representation models. Additionally, the framework enables the visualization of the embeddings according to the distribution of the topological features among the nodes. Moreover, TopoDetect enables us to study the effect of the preservation of these features by evaluating the performance of the embeddings on downstream learning tasks such as clustering and classification.

Abstract (translated)

URL

https://arxiv.org/abs/2110.04173

PDF

https://arxiv.org/pdf/2110.04173.pdf


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