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LEARNING INTERPRETABLE RELATIONSHIPS BETWEEN ENTITIES, RELATIONS, AND CONCEPTS VIA BAYESIAN STRUCTURE LEARNING ON OPEN DOMAIN FACTS
LEARNING INTERPRETABLE RELATIONSHIPS BETWEEN ENTITIES, RELATIONS, AND CONCEPTS VIA BAYESIAN STRUCTURE LEARNING ON OPEN DOMAIN FACTS
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机译:通过贝叶斯结构学习在开放域事实上学习实体,关系和概念之间的可解释关系
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摘要
Concept graphs are created as universal taxonomies for text understanding in the open domain knowledge. The nodes in concept graphs include both entities and concepts. The edges are from entities to concepts, showing that an entity is an instance of a concept. Presented herein are embodiments that handle the task of learning interpretable relationships from open domain facts to enrich and refine concept graphs. In one or more embodiments, the Bayesian network structures are learned from open domain facts as the interpretable relationships between relations of facts and concepts of entities. Extensive experiments were conducted on English and Chinese datasets. Compared to the state-of-the-art methods, the learned network structures improve the identification of concepts for entities based on the relations of entities on both English and Chinese datasets.
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