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Papers/AGIF: An Adaptive Graph-Interactive Framework for Joint Mu...

AGIF: An Adaptive Graph-Interactive Framework for Joint Multiple Intent Detection and Slot Filling

Libo Qin, Xiao Xu, Wanxiang Che, Ting Liu

2020-04-21Findings of the Association for Computational Linguistics 2020Semantic ParsingSemantic Frame ParsingIntent Detectionslot-fillingSlot FillingSpoken Language Understanding
PaperPDFCode(official)

Abstract

In real-world scenarios, users usually have multiple intents in the same utterance. Unfortunately, most spoken language understanding (SLU) models either mainly focused on the single intent scenario, or simply incorporated an overall intent context vector for all tokens, ignoring the fine-grained multiple intents information integration for token-level slot prediction. In this paper, we propose an Adaptive Graph-Interactive Framework (AGIF) for joint multiple intent detection and slot filling, where we introduce an intent-slot graph interaction layer to model the strong correlation between the slot and intents. Such an interaction layer is applied to each token adaptively, which has the advantage to automatically extract the relevant intents information, making a fine-grained intent information integration for the token-level slot prediction. Experimental results on three multi-intent datasets show that our framework obtains substantial improvement and achieves the state-of-the-art performance. In addition, our framework achieves new state-of-the-art performance on two single-intent datasets.

Results

TaskDatasetMetricValueModel
Slot FillingMixSNIPSMicro F194.5AGIF
Slot FillingATISF10.96AGIF
Slot FillingSNIPSF194.8AGIF
Intent DetectionMixSNIPSAccuracy96.5AGIF
Intent DetectionMixSNIPSf1 macro98.6AGIF
Intent DetectionATISAccuracy97.1AGIF
Intent DetectionSNIPSAccuracy98.1AGIF

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