TY - JOUR T1 - Knowledge Graph Embedding with Entity Type Constraints AU - Kong, Seunghwan AU - Chung, Chanyoung AU - Ju, Suheon AU - Whang, Joyce Jiyoung JO - Journal of KIISE, JOK PY - 2022 DA - 2022/1/14 DO - 10.5626/JOK.2022.49.9.773 KW - knowledge graph KW - embedding KW - entity type KW - negative sampling KW - link prediction AB - Knowledge graph embedding represents entities and relationships in the feature space by utilizing the structural properties of the graph. Most knowledge graph embedding models rely only on the structural information to generate embeddings. However, some real-world knowledge graphs include additional information such as entity types. In this paper, we propose a knowledge graph embedding model by designing a loss function that reflects not only the structure of a knowledge graph but also the entity-type information. In addition, from the observation that certain type constraints exist on triplets based on their relations, we present a negative sampling technique considering the type constraints. We create the SMC data set, a knowledge graph with entity-type restrictions to evaluate our model. Experimental results show that our model outperforms the other baseline models.