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Jointly Modeling Intent Identification and Slot Filling with Contextual and Hierarchical Information

机译:用上下文和分层信息共同建模意图识别和插槽填充

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Intent classification and slot filling are two critical subtasks of natural language understanding (NLU) in task-oriented dialogue systems. Previous work has made use of either hierarchical or contextual information when jointly modeling intent classification and slot filling, proving that either of them is helpful for joint models. This paper proposes a cluster of joint models to encode both types of information at the same time. Experimental results on different datasets show that the proposed models outperform joint models without either hierarchical or contextual information. Besides, finding the balance between two loss functions of two subtasks is important to achieve best overall performances.
机译:意图分类和插槽填充是任务导向的对话系统中的自然语言理解(NLU)的两个关键组织。以前的工作在联合建模意图分类和插槽填充时已经使用了分层或上下文信息,证明了它们中的任何一个都有助于联合模型。本文提出了一组联合模型,同时编码两种类型的信息。不同数据集上的实验结果表明,所提出的模型优于具有分层或上下文信息的联合模型。此外,在两个子特设的两个损失函数之间找到平衡对于实现最佳整体表演非常重要。

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