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Multi-grained Label Refinement Network with Dependency Structures for Joint Intent Detection and Slot Filling

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arxiv 2209.04156 v1 pith:37VKL6LJ submitted 2022-09-09 cs.CL

Multi-grained Label Refinement Network with Dependency Structures for Joint Intent Detection and Slot Filling

classification cs.CL
keywords labeldependencyintentsemanticstructuressyntactictasktasks
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Slot filling and intent detection are two fundamental tasks in the field of natural language understanding. Due to the strong correlation between these two tasks, previous studies make efforts on modeling them with multi-task learning or designing feature interaction modules to improve the performance of each task. However, none of the existing approaches consider the relevance between the structural information of sentences and the label semantics of two tasks. The intent and semantic components of a utterance are dependent on the syntactic elements of a sentence. In this paper, we investigate a multi-grained label refinement network, which utilizes dependency structures and label semantic embeddings. Considering to enhance syntactic representations, we introduce the dependency structures of sentences into our model by graph attention layer. To capture the semantic dependency between the syntactic information and task labels, we combine the task specific features with corresponding label embeddings by attention mechanism. The experimental results demonstrate that our model achieves the competitive performance on two public datasets.

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