2022
DOI: 10.48550/arxiv.2209.07299
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Knowledge Is Flat: A Seq2Seq Generative Framework for Various Knowledge Graph Completion

Abstract: Knowledge Graph Completion (KGC) has been recently extended to multiple knowledge graph (KG) structures, initiating new research directions, e.g. static KGC, temporal KGC and few-shot KGC (Ji et al., 2022). Previous works often design KGC models closely coupled with specific graph structures, which inevitably results in two drawbacks: 1) structurespecific KGC models are mutually incompatible; 2) existing KGC methods are not adaptable to emerging KGs. In this paper, we propose KG-S2S, a Seq2Seq generative frame… Show more

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