首页> 外国专利> 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

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

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.
机译:在开放域知识中创建概念图是作为通用分类的文本理解。 概念图中的节点包括实体和概念。 边缘来自实体到概念,显示实体是概念的实例。 这里呈现的是处理从开放域事实中学习可解释关系以丰富和优化概念图的任务的实施例。 在一个或多个实施例中,贝叶斯网络结构从开放域事实中了解到作为事实关系与实体概念之间的可解释关系。 在英语和中文数据集中进行了广泛的实验。 与最先进的方法相比,学习的网络结构基于英文和中文数据集的实体的关系来改善实体的概念的识别。

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