Pre-Trained Joint Model for Intent Classification and Slot Filling with Semantic Feature Fusion

Author:

Chen Yan123ORCID,Luo Zhenghang1

Affiliation:

1. School of Computer and Electronic Information, Guangxi University, Nanning 530004, China

2. Guangxi Key Laboratory of Multimedia Communication and Network Technology, Guangxi University, Nanning 530004, China

3. Guangxi Intelligent Digital Services Research Center of Engineering Technology, Nanning 530004, China

Abstract

The comprehension of spoken language is a crucial aspect of dialogue systems, encompassing two fundamental tasks: intent classification and slot filling. Currently, the joint modeling approach for these two tasks has emerged as the dominant method in spoken language understanding modeling. However, the existing joint models have limitations in terms of their relevancy and utilization of contextual semantic features between the multiple tasks. To address these limitations, a joint model based on BERT and semantic fusion (JMBSF) is proposed. The model employs pre-trained BERT to extract semantic features and utilizes semantic fusion to associate and integrate this information. The results of experiments on two benchmark datasets, ATIS and Snips, in spoken language comprehension demonstrate that the proposed JMBSF model attains 98.80% and 99.71% intent classification accuracy, 98.25% and 97.24% slot-filling F1-score, and 93.40% and 93.57% sentence accuracy, respectively. These results reveal a significant improvement compared to other joint models. Furthermore, comprehensive ablation studies affirm the effectiveness of each component in the design of JMBSF.

Funder

Natural Science Foundation of Guangxi Province OFFUNDER

China Ministry of Education New Generation Information Technology Innovation Project

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference35 articles.

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2. Chen, Q., Zhuo, Z., and Wang, W. (2019). Bert for joint intent classification and slot filling. arXiv.

3. Zhang, C., Li, Y., Du, N., Fan, W., and Yu, P.S. (2018). Joint slot filling and intent detection via capsule neural networks. arXiv.

4. Ramanand, J., Bhavsar, K., and Pedanekar, N. (2010, January 5). Wishful thinking-finding suggestions and ’buy’ wishes from product reviews. Proceedings of the NAACL HLT 2010 Workshop on Computational Approaches to Analysis and Generation of Emotion in Text, Los Angeles, CA, USA.

5. Thomson, B. (2013). Statistical Methods for Spoken Dialogue Management, Springer Science & Business Media.

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