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SimplE Embedding for Link Prediction in Knowledge Graphs

Neural Information Processing Systems

Knowledge graphs contain knowledge about the world and provide a structured representation of this knowledge. Current knowledge graphs contain only a small subset of what is true in the world. Link prediction approaches aim at predicting new links for a knowledge graph given the existing links among the entities. Tensor factorization approaches have proved promising for such link prediction problems. Proposed in 1927, Canonical Polyadic (CP) decomposition is among the first tensor factorization approaches.


Reviews: SimplE Embedding for Link Prediction in Knowledge Graphs

Neural Information Processing Systems

The contribution is a tensor factorization method that represents each object and relation as some vector. The main novelty relative to previous approaches is that each relation r is represented by two embedding vectors: one for r, and one for r -1. The motivation is that should allow objects that appear as both heads and tails to more easily learn jointly from both roles.


SimplE Embedding for Link Prediction in Knowledge Graphs

Kazemi, Seyed Mehran, Poole, David

Neural Information Processing Systems

Knowledge graphs contain knowledge about the world and provide a structured representation of this knowledge. Current knowledge graphs contain only a small subset of what is true in the world. Link prediction approaches aim at predicting new links for a knowledge graph given the existing links among the entities. Tensor factorization approaches have proved promising for such link prediction problems. Proposed in 1927, Canonical Polyadic (CP) decomposition is among the first tensor factorization approaches.