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Reasoning Through Memorization: Nearest Neighbor Knowledge Graph Embeddings

Natural Language Processing and Chinese Computing (NLPCC), 2022
Ningyu Zhang
Xiang Chen
Shumin Deng
Chuanqi Tan
Fei Huang
Xu Cheng
Huajun Chen
Abstract

Previous knowledge graph embedding approaches usually map entities to representations and utilize score functions to predict the target entities, yet they struggle to reason rare or emerging unseen entities. In this paper, we propose kNN-KGE, a new knowledge graph embedding approach, by linearly interpolating its entity distribution with k-nearest neighbors. We compute the nearest neighbors based on the distance in the entity embedding space from the knowledge store. Our approach can allow rare or emerging entities to be memorized explicitly rather than implicitly in model parameters. Experimental results demonstrate that our approach can improve inductive and transductive link prediction results and yield better performance for low-resource settings with only a few triples, which might be easier to reason via explicit memory.

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