When it comes to comprehending and analyzing multi-relational data, the semantics of relations are crucial. Polysemous relations between different types of entities, that represent multiple semantics, are common in real-world relational datasets represented by knowledge graphs. For numerous use cases, such as entity type classification, question answering and knowledge graph completion, the correct semantic interpretation of these relations is necessary. In this work, we provide a strategy for discovering the different semantics associated with abstract relations and deriving many sub-relations with fine-grained meaning. To do this, we leverage the types of the entities associated with the relations and cluster the vector representations of entities and relations. The suggested method is able to automatically discover the best number of sub-relations for a polysemous relation and determine their semantic interpretation, according to our empirical evaluation.
翻译:当涉及到理解和分析多关系数据时,关系的语义至关重要。代表多种语义的不同类型实体之间的多重关系在以知识图表为代表的现实世界关系数据集中是常见的。对于许多使用案例,例如实体类型分类、问题回答和知识图的完成,有必要对这些关系进行正确的语义解释。在这项工作中,我们提供了一种战略,以发现与抽象关系相关的不同语义,并得出许多精细的次关系。为了做到这一点,我们利用与实体和关系的矢量表达和组合有关的实体类型。建议的方法能够自动发现多种关系的最佳次关系数量,并根据我们的经验评估确定其语义解释。