Improving Text Matching with Semantic Dependency Graph via Message Passing Neural Network
- Resource Type
- Authors
- Dazhan Mao; Yanqiu Shao; Yongkang Song; Dianqing Liu
- Source
- Lecture Notes in Computer Science ISBN: 9783030786083
ICAIS (1)
- Subject
- Artificial neural network
Generalization
Computer science
business.industry
Message passing
computer.software_genre
ENCODE
Robustness (computer science)
Core (graph theory)
Graph (abstract data type)
Artificial intelligence
business
computer
Word (computer architecture)
Natural language processing
- Language
Text matching is a core natural language processing research problem. Deep semantic alignment and comparison between two text sequences lie in the core of text matching. While the attention-based model achieves high accuracy through word-level or char-lever alignment, they ignore the deep semantic relations between words and have poor generalization performance. This paper presents a neural approach to leveraging the Chinese Semantic Dependency Graph for text matching. This model uses Message Passing neural network to encode the semantic relation between word and use these semantic associations to assist semantic alignment and comparison. Experimental results demonstrate that our method substantially achieves state-of-the-art performance compare to the strong baseline model. The further discussion shows that our model can improve the text alignment process and have better robustness and comprehensibility.