2023
DOI: 10.1609/aaai.v37i13.26932
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Privacy-Preserving Representation Learning for Text-Attributed Networks with Simplicial Complexes

Abstract: Although recent network representation learning (NRL) works in text-attributed networks demonstrated superior performance for various graph inference tasks, learning network representations could always raise privacy concerns when nodes represent people or human-related variables. Moreover, standard NRLs that leverage structural information from a graph proceed by first encoding pairwise relationships into learned representations and then analysing its properties. This approach is fundamentally misaligned with… Show more

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