Convolutional neural network based triangular CRF for joint intent detection and slot filling

Puyang Xu, R. Sarikaya
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引用次数: 316

Abstract

We describe a joint model for intent detection and slot filling based on convolutional neural networks (CNN). The proposed architecture can be perceived as a neural network (NN) version of the triangular CRF model (TriCRF), in which the intent label and the slot sequence are modeled jointly and their dependencies are exploited. Our slot filling component is a globally normalized CRF style model, as opposed to left-to-right models in recent NN based slot taggers. Its features are automatically extracted through CNN layers and shared by the intent model. We show that our slot model component generates state-of-the-art results, outperforming CRF significantly. Our joint model outperforms the standard TriCRF by 1% absolute for both intent and slot. On a number of other domains, our joint model achieves 0.7-1%, and 0.9-2.1% absolute gains over the independent modeling approach for intent and slot respectively.
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基于卷积神经网络的三角CRF联合意图检测与缝隙填充
我们描述了一种基于卷积神经网络(CNN)的意图检测和槽填充联合模型。所提出的体系结构可以被视为三角CRF模型(TriCRF)的神经网络(NN)版本,其中意图标签和槽序列联合建模,并利用它们的依赖关系。我们的槽填充组件是一个全局归一化的CRF样式模型,而不是最近基于神经网络的槽标记器中的从左到右模型。其特征通过CNN层自动提取,并由意图模型共享。我们表明,我们的槽模型组件产生了最先进的结果,显著优于CRF。我们的联合模型在意图和插槽方面都比标准TriCRF高出1%。在许多其他领域,我们的联合模型分别比意图和槽的独立建模方法获得0.7-1%和0.9-2.1%的绝对增益。
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