articleJan 30, 2019Closed access
Knowledge Graph Embedding Based Question Answering
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Abstract
Question answering over knowledge graph (QA-KG) aims to use facts in the knowledge graph (KG) to answer natural language questions. It helps end users more efficiently and more easily access the substantial and valuable knowledge in the KG, without knowing its data structures. QA-KG is a nontrivial problem since capturing the semantic meaning of natural language is difficult for a machine. Meanwhile, many knowledge graph embedding methods have been proposed. The key idea is to represent each predicate/entity as a low-dimensional vector, such that the relation information in the KG could be preserved. The learned vectors could benefit various applications such as KG completion and recommender systems. In this…
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Keywords
- Question answering
- Computer science
- Embedding
- Predicate (mathematical logic)
- Natural language processing
- Knowledge graph
- Natural language
- Artificial intelligence
UN Sustainable Development Goals
- Quality Education
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