Intent Detection and Slot Filling for Vietnamese

Abstract

Intent detection and slot filling are important tasks in spoken and natural language understanding. However, Vietnamese is a low-resource language in these research topics. In this paper, we present the first public intent detection and slot filling dataset for Vietnamese. In addition, we also propose a joint model for intent detection and slot filling, that extends the recent state-of-the-art JointBERT+CRF model with an intent-slot attention layer to explicitly incorporate intent context information into slot filling via “soft” intent label embedding. Experimental results on our Vietnamese dataset show that our proposed model significantly outperforms JointBERT+CRF. We publicly release our dataset and the implementation of our model.

Publication
In The 22nd Annual Conference of the International Speech Communication Association
Mai Hoang Dao
Mai Hoang Dao
NLP Research Intern

My research interests include spoken language understanding in low-resource languages and multilingual NLP.

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