Knowledge Graphs (KGs) are ubiquitous structures for information storagein several real-world applications such as web search, e-commerce, social networks, and biology. Querying KGs remains a foundational and challenging problem due to their size and complexity. Promising approaches to tackle this problem include embedding the KG units (e.g., entities and relations) in a Euclidean space such that the query embedding contains the information relevant to its results. These approaches, however, fail to capture the hierarchical nature and semantic information of the entities present in the graph. Additionally, most of these approaches only utilize multi-hop queries (that can be modeled by simple translation operations) to learn embeddings and ignore more complex operations such as intersection and union of simpler queries. To tackle such complex operations, in this paper, we formulate KG representation learning as a self-supervised logical query reasoning problem that utilizes translation, intersection and union queries over KGs. We propose Hyperboloid Embeddings (HypE), a novel self-supervised dynamic reasoning framework, that utilizes positive first-order existential queries on a KG to learn representations of its entities and relations as hyperboloids in a Poincar\'e ball. HypE models the positive first-order queries as geometrical translation, intersection, and union. For the problem of KG reasoning in real-world datasets, the proposed HypE model significantly outperforms the state-of-the art results. We also apply HypE to an anomaly detection task on a popular e-commerce website product taxonomy as well as hierarchically organized web articles and demonstrate significant performance improvements compared to existing baseline methods. Finally, we also visualize the learned HypE embeddings in a Poincar\'e ball to clearly interpret and comprehend the representation space.
翻译:知识图( KGs) 是存储信息的一些真实世界应用程序, 如网络搜索、 电子商务、 社交网络和生物学, 信息存储的无处不在的结构 。 查询 KGs 因其规模和复杂性而仍然是一个基础性和具有挑战性的问题 。 解决这一问题的有希望的方法包括将 KG 单位( 如实体和关系) 嵌入 Euclidean 空间, 以便查询嵌入包含与其结果相关的信息 。 然而, 这些方法无法捕捉图形中各实体的等级性质和语义改进信息 。 此外, 这些方法大多只使用多点询问( 可以以简单的翻译作业为模范 ) 来学习嵌入和忽略更复杂的操作, 例如交叉和合并简单查询 。 为了处理这类复杂的操作, 在本文件中, 我们将 KG 代表学习作为自我统一逻辑推理问题, 使用翻译、 交叉和组合式的地理查询 KG 。 我们建议 Chybolebroup Embregistrate 、 动态推理框架, 将HBal- deal deal deal deal deal deal deal deal deal deal exal deal deal deal deal deal deal deal deal deal deal destrations destr mastration 。