Alapfogalmak
Novel Graph Neural Network GOOD designed for out-of-domain link prediction in dynamic multi-relational graphs.
Kivonat
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.
Statisztikák
"GOOD can effectively generalize predictions out of known relationship types."
"State-of-the-art results achieved by GOOD in five benchmark tasks."
"Dirichelet distribution used for sampling random mixing coefficients."
Idézetek
"We introduce a novel Graph Neural Network model, named GOOD, designed specifically to tackle the out-of-domain generalization problem."
"Most importantly, we provide insights into problems where out-of-domain prediction might be preferred to an in-domain formulation."