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KNOWLEDGE ROUTER: Learning Disentangled Representations for Knowledge Graphs

机译:知识路由器:学习知识图表的解除不诚格表示

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The design of expressive representations of entities and relations in a knowledge graph is an important endeavor. While many of the existing approaches have primarily focused on learning from relational patterns and structural information, the intrinsic complexity of KG entities has been more or less overlooked. More concretely, we hypothesize KG entities may be more complex than we think, i.e., an entity may wear many hats and relational triplets may form due to more than a single reason. To this end, this paper proposes to learn disentangled representations of KG entities - a new method that disentangles the inner latent properties of KG entities. Our disentangled process operates at the graph level and a neighborhood mechanism is leveraged to disentangle the hidden properties of each entity. This disentangled representation learning approach is model agnostic and compatible with canonical KG embedding approaches. We conduct extensive experiments on several benchmark datasets, equipping a variety of models (DistMult, SimplE, and QuatE) with our proposed disentangling mechanism. Experimental results demonstrate that our proposed approach substantially improves performance on key metrics.
机译:知识图中的实体和关系表现形式的设计是一个重要的努力。虽然许多现有方法主要专注于学习关系模式和结构信息,但是KG实体的内在复杂性或多或少被忽视。更具体地说,我们假设KG实体可能比我们想象的更复杂,即,由于多于单一的原因,实体可能佩戴许多帽子和关系三联体。为此,本文建议学习KG实体的解除响应 - 一种解开KG实体内部潜在特性的新方法。我们的解离过程在图表水平上运行,并且利用邻域机制来解除每个实体的隐藏属性。这种解除不安的代表性学习方法是模型不可知论者,与规范KG嵌入方法相容。我们对多个基准数据集进行了广泛的实验,并配备了各种模型(DISTJULT,简单和评价),我们提出的解解机制。实验结果表明,我们的建议方法大大提高了关键指标的性能。

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