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Tri-level Joint Natural Language Understanding for Multi-turn Conversational Datasets

About

Natural language understanding typically maps single utterances to a dual level semantic frame, sentence level intent and slot labels at the word level. The best performing models force explicit interaction between intent detection and slot filling. We present a novel tri-level joint natural language understanding approach, adding domain, and explicitly exchange semantic information between all levels. This approach enables the use of multi-turn datasets which are a more natural conversational environment than single utterance. We evaluate our model on two multi-turn datasets for which we are the first to conduct joint slot-filling and intent detection. Our model outperforms state-of-the-art joint models in slot filling and intent detection on multi-turn data sets. We provide an analysis of explicit interaction locations between the layers. We conclude that including domain information improves model performance.

Henry Weld, Sijia Hu, Siqu Long, Josiah Poon, Soyeon Caren Han• 2023

Related benchmarks

TaskDatasetResultRank
Intent DetectionM2M
Accuracy94.19
18
Slot FillingMWOZ
Micro F197.98
18
Slot FillingM2M
Micro F193.02
18
Intent DetectionMWOZ
Accuracy78.49
18
Domain ClassificationM2M
Accuracy89.38
16
Domain ClassificationMWOZ
Accuracy25.72
16
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