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Papers/LogicENN: A Neural Based Knowledge Graphs Embedding Model ...

LogicENN: A Neural Based Knowledge Graphs Embedding Model with Logical Rules

Mojtaba Nayyeri, Chengjin Xu, Jens Lehmann, Hamed Shariat Yazdi

2019-08-20Knowledge GraphsKnowledge Graph EmbeddingNegationGraph EmbeddingLink Prediction
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Abstract

Knowledge graph embedding models have gained significant attention in AI research. Recent works have shown that the inclusion of background knowledge, such as logical rules, can improve the performance of embeddings in downstream machine learning tasks. However, so far, most existing models do not allow the inclusion of rules. We address the challenge of including rules and present a new neural based embedding model (LogicENN). We prove that LogicENN can learn every ground truth of encoded rules in a knowledge graph. To the best of our knowledge, this has not been proved so far for the neural based family of embedding models. Moreover, we derive formulae for the inclusion of various rules, including (anti-)symmetric, inverse, irreflexive and transitive, implication, composition, equivalence and negation. Our formulation allows to avoid grounding for implication and equivalence relations. Our experiments show that LogicENN outperforms the state-of-the-art models in link prediction.

Results

TaskDatasetMetricValueModel
Link Prediction FB15kHits@100.874LogicENN
Link Prediction FB15kMR112LogicENN
Link Prediction FB15kMRR0.766LogicENN
Link PredictionWN18Hits@100.948LogicENN
Link PredictionWN18MR357LogicENN
Link PredictionWN18MRR0.923LogicENN
Link PredictionFB15k-237Hits@100.473LogicENN
Link PredictionFB15k-237MR424LogicENN

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