The content introduces the GOOD model, addressing out-of-domain link prediction in dynamic multi-relational graphs. It highlights the challenges of predicting relationships not present in the input graph and proposes a novel approach to tackle this problem. The model focuses on disentangling mixing proportions of relational embeddings to improve generalization. Experimental results show that GOOD outperforms existing models in terms of ROC-AUC performance across various datasets.
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by Asma Sattar,... at arxiv.org 03-19-2024
https://arxiv.org/pdf/2403.11292.pdfDeeper Inquiries