Główne pojęcia
Transforming non-Euclidean graphs into Euclidean representations using GraphsGPT.
Statystyki
We pretrain GraphsGPT on 100M molecules.
Pretrained Graph2Seq excels in graph representation learning.
Pretrained GraphGPT serves as a strong graph generator.
Cytaty
"Can we model non-Euclidean graphs as pure language or even Euclidean vectors while retaining their inherent information?" - Zhangyang Gao et al.
"Graph2Seq+GraphGPT enables effective graph mixup in the Euclidean space, overcoming previously known non-Euclidean challenge." - Zhangyang Gao et al.