Learning High-Order Semantic Representation for Intent Classification and Slot Filling on Low-Resource Language via Hypergraph

Author:

Qi Xianglong1,Gao Yang2,Wang Ruibin2,Zhao Minghua3,Cui Shengjia3ORCID,Mortazavi Mohsen45ORCID

Affiliation:

1. Liaoning Huading Technology Co Ltd, Shenyang, Liaoning 110167, China

2. Digital China Information Service Company Ltd, Beijing 100085, China

3. Baidu Co Ltd, Beijing 100085, China

4. Department of Computer Science, Islamic Azad University, Mahshahr, Iran

5. Department of Computer Education and Instructional Technologies, Eastern Mediterranean University (EMU), Famagusta 99628, Cyprus

Abstract

Representation of language is the first and critical task for Natural Language Understanding (NLU) in a dialogue system. Pretraining, embedding model, and fine-tuning for intent classification and slot-filling are popular and well-performing approaches but are time consuming and inefficient for low-resource languages. Concretely, the out-of-vocabulary and transferring to different languages are two tough challenges for multilingual pretrained and cross-lingual transferring models. Furthermore, quality-proved parallel data are necessary for the current frameworks. Stepping over these challenges, different from the existing solutions, we propose a novel approach, the Hypergraph Transfer Encoding Network “HGTransEnNet. The proposed model leverages off-the-shelf high-quality pretrained word embedding models of resource-rich languages to learn the high-order semantic representation of low-resource languages in a transductive clustering manner of hypergraph modeling, which does not need parallel data. The experiments show that the representations learned by “HGTransEnNet” for low-resource language are more effective than the state-of-the-art language models, which are pretrained on a large-scale multilingual or monolingual corpus, in intent classification and slot-filling tasks on Indonesian and English datasets.

Publisher

Hindawi Limited

Subject

General Engineering,General Mathematics

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