Jan. 31, 2024, 3:46 p.m. | Shengchao Liu Chengpeng Wang Jiarui Lu Weili Nie Hanchen Wang Zhuoxinran Li Bolei Zhou Jian Ta

cs.LG updates on arXiv.org arxiv.org

Deep generative models (DGMs) have been widely developed for graph data. However, much less investigation has been carried out on understanding the latent space of such pretrained graph DGMs. These understandings possess the potential to provide constructive guidelines for crucial tasks, such as graph controllable generation. Thus in this work, we are interested in studying this problem and propose GraphCG, a method for the unsupervised discovery of steerable factors in the latent space of pretrained graph DGMs. We first examine …

cs.ai cs.lg data deep generative models dgms discovery generative generative models graph graph data guidelines investigation q-bio.qm space tasks understanding unsupervised

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