NeuralKG-ind: A Python Library for Inductive Knowledge Graph Representation Learning

Zhang, Wen, Yao, Zhen, Chen, Mingyang, Huang, Zhiwei, Chen, Huajun

arXiv.org Artificial Intelligence 

Typical methods include Since the dynamic characteristics of knowledge graphs, many inductive conventional KGEs [3, 30, 32, 40], GNN-based KGEs [28, 33], and knowledge graph representation learning (KGRL) works rule-based KGEs [16, 44]. However, the world is dynamic, where have been proposed in recent years, focusing on enabling prediction new entities are continuously added to KGs, and new KGs are continuously over new entities. NeuralKG-ind is the first library of inductive constructed. The traditional KGRL methods, which learn KGRL as an important update of NeuralKG library. It includes standardized embeddings for a fixed set of entities, fail to generalize to new elements.

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