一种不确定性知识图上的动态表示框架

A DYNAMIC REPRESENTATION FRAMEWORK FOR UNCERTAIN KNOWLEDGE GRAPH

  • 摘要: 如何将确定性知识图上的嵌入模型应用于不确定性推理,尚无统一标准,且事实置信度的计算机制也有待优化,基于此提出一种基于不确定性知识图的表示和推理框架,提供对主流确定性模型的支持。调整确定性模型得分函数取值区间,引入松弛系数设计结合置信度与规则的损失函数;改进负例三元组的生成方式,优化置信度的迭代更新和使用机制。在主流数据集上开展尾实体预测和置信度评估,结果表明该文框架的性能相比主流模型有一定提升。

     

    Abstract: For now there is no unified standard for how to apply embedding models on deterministic knowledge graphs to uncertain knowledge inference. The computing mechanism for fact confidence is also to be improved. A framework named BFUKG (better framework for uncertain knowledge graph) is proposed to extend mainstream deterministic embedding models to uncertain graphs. Value intervals of deterministic model score functions were adjusted as well as the loss function design combining confidence and rules with the help of a slack co-efficient. In the meantime, the generation process of negative triples was improved while a computing and updating mechanism for confidence scores was put forward. Framework performance was verified on tasks including tail entity prediction and confidence evaluation on mainstream datasets. The results show that the performance of the proposed framework has a certain improvement compared with mainstream models.

     

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