中国邮电高校学报(英文) ›› 2020, Vol. 27 ›› Issue (1): 100-108.doi: 10.19682/j.cnki.1005-8885.2020.0005

• Artificial Intelligence • 上一篇    

Multi-granularities capture interaction information for text matching accuracy enhancement

金亮,曹小鹏   

  1. 西安邮电大学
  • 收稿日期:2019-07-23 修回日期:2019-12-04 出版日期:2020-02-28 发布日期:2020-02-28
  • 通讯作者: 曹小鹏 E-mail:caoxp@xiyou.edu.cn

Multi-granularities capture interaction information for text matching accuracy enhancement

Liang JIN1,Xiao-Peng CAO   

  • Received:2019-07-23 Revised:2019-12-04 Online:2020-02-28 Published:2020-02-28
  • Contact: Xiao-Peng CAO E-mail:caoxp@xiyou.edu.cn

摘要: Modeling and Matching texts is a critical issue in natural language processing (NLP) tasks. In order to improve the accuracy of text matching, multi-granularities capture matching features (MG-CMF) model was proposed. The proposed model used convolution operations to construct the representation of text under multiple granularities, used max-pooling operations to filter more reasonable text representations and built a matching matrix at different granularities. Then, the convolution neural network (CNN) was used to capture the matching information in each granularity. Finally, the captured matching features were input into the fully connected neural network to obtain the matching similarity. By making some experiments, the results indicate that the MG-CMF model not only gets multiple granularity representations of sentences but also can obtain matching information from multiple granularities of sentences better than the other text matching models.

关键词: representation model, interaction model, text matching, multi-granularity, capture the matching information

Abstract: Modeling and Matching texts is a critical issue in natural language processing (NLP) tasks. In order to improve the accuracy of text matching, multi-granularities capture matching features (MG-CMF) model was proposed. The proposed model used convolution operations to construct the representation of text under multiple granularities, used max-pooling operations to filter more reasonable text representations and built a matching matrix at different granularities. Then, the convolution neural network (CNN) was used to capture the matching information in each granularity. Finally, the captured matching features were input into the fully connected neural network to obtain the matching similarity. By making some experiments, the results indicate that the MG-CMF model not only gets multiple granularity representations of sentences but also can obtain matching information from multiple granularities of sentences better than the other text matching models.

Key words: representation model, interaction model, text matching, multi-granularity, capture the matching information