论文标题
共同引导网络:通过异质语义标签图在多个意图检测和插槽填充之间实现相互指导
Co-guiding Net: Achieving Mutual Guidances between Multiple Intent Detection and Slot Filling via Heterogeneous Semantics-Label Graphs
论文作者
论文摘要
最新的基于图的联合多重意图检测和插槽填充的模型通过建模从意图预测到插槽填充解码的指导,从而获得了令人鼓舞的结果。但是,现有方法(1)仅对\ textit {Uniredectional Guidance}建模从意图到插槽; (2)采用\ textIt {均匀图}来建模插槽语义节点和意图标签节点之间的相互作用,从而限制了性能。在本文中,我们提出了一个称为共同引导网络的新型模型,该模型实现了两个任务之间实现\ textit {相互指导}的两个阶段框架。在第一阶段,产生了两个任务的初始估计标签,然后在第二阶段将它们杠杆化以建模相互指导。具体来说,我们提出了两个\ textit {异质图注意网络}在提出的两个\ textit {异质语义标签图}上工作,它们有效地表示语义节点和标签节点之间的关系。实验结果表明,我们的模型比现有模型的优于现有模型,从而比Mixatis数据集的先前最佳模型获得了19.3 \%的相对改善,总体准确性。
Recent graph-based models for joint multiple intent detection and slot filling have obtained promising results through modeling the guidance from the prediction of intents to the decoding of slot filling. However, existing methods (1) only model the \textit{unidirectional guidance} from intent to slot; (2) adopt \textit{homogeneous graphs} to model the interactions between the slot semantics nodes and intent label nodes, which limit the performance. In this paper, we propose a novel model termed Co-guiding Net, which implements a two-stage framework achieving the \textit{mutual guidances} between the two tasks. In the first stage, the initial estimated labels of both tasks are produced, and then they are leveraged in the second stage to model the mutual guidances. Specifically, we propose two \textit{heterogeneous graph attention networks} working on the proposed two \textit{heterogeneous semantics-label graphs}, which effectively represent the relations among the semantics nodes and label nodes. Experiment results show that our model outperforms existing models by a large margin, obtaining a relative improvement of 19.3\% over the previous best model on MixATIS dataset in overall accuracy.