Knowledge graph (KG) embedding is well-known in learning representations of KGs. Many models have been proposed to learn the interactions between entities and relations of the triplets. However, long-term information among multiple triplets is also important to KG. In this work, based on the relational paths, which are composed of a sequence of triplets, we define the Interstellar as a recurrent neural architecture search problem for the short-term and long-term information along the paths. First, we analyze the difficulty of using a unified model to work as the Interstellar. Then, we propose to search for recurrent architecture as the Interstellar for different KG tasks. A case study on synthetic data illustrates the importance of the defined search problem. Experiments on real datasets demonstrate the effectiveness of the searched models and the efficiency of the proposed hybrid-search algorithm.
翻译:知识图(KG)嵌入在KGs的学习表现形式中是众所周知的。许多模型被提出来学习实体之间的互动和三胞胎之间的关系。然而,多三胞胎之间的长期信息对KG来说也很重要。在这项工作中,根据由三胞胎组成的关系路径,我们将Interstellar定义为沿路径的短期和长期信息的一个经常性神经结构搜索问题。首先,我们分析使用统一的模型作为Interstellar的操作困难。然后,我们建议寻找作为Interstellar的经常性结构,作为不同KG任务的Interstellar。关于合成数据的案例研究说明了界定的搜索问题的重要性。对真实数据集的实验显示了搜索模型的有效性和拟议混合搜索算法的效率。