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Relation Specific Transformations for Open World Knowledge Graph Completion

2020-12-01COLING (TextGraphs) 2020Code Available0· sign in to hype

Haseeb Shah, Johannes Villmow, Adrian Ulges

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Abstract

We propose an open-world knowledge graph completion model that can be combined with common closed-world approaches (such as ComplEx) and enhance them to exploit text-based representations for entities unseen in training. Our model learns relation-specific transformation functions from text-based to graph-based embedding space, where the closed-world link prediction model can be applied. We demonstrate state-of-the-art results on common open-world benchmarks and show that our approach benefits from relation-specific transformation functions (RST), giving substantial improvements over a relation-agnostic approach.

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