On the Complementary Nature of Knowledge Graph Embedding, Fine Grain Entity Types, and Language Modeling

Rajat Patel, Francis Ferraro

Deep Learning Inside Out (DeeLIO): The First Workshop on Knowledge Extraction and Integration for Deep Learning Architectures Workshop Paper

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Abstract: We demonstrate the complementary natures of neural knowledge graph embedding, fine-grain entity type prediction, and neural language modeling. We show that a language model-inspired knowledge graph embedding approach yields both improved knowledge graph embeddings and fine-grain entity type representations. Our work also shows that jointly modeling both structured knowledge tuples and language improves both.
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