Coarse-to-fine Knowledge Graph Domain Adaptation based on Distantly-supervised Iterative Training (2211.02849v2)
Abstract: Modern supervised learning neural network models require a large amount of manually labeled data, which makes the construction of domain-specific knowledge graphs time-consuming and labor-intensive. In parallel, although there has been much research on named entity recognition and relation extraction based on distantly supervised learning, constructing a domain-specific knowledge graph from large collections of textual data without manual annotations is still an urgent problem to be solved. In response, we propose an integrated framework for adapting and re-learning knowledge graphs from one coarse domain (biomedical) to a finer-define domain (oncology). In this framework, we apply distant-supervision on cross-domain knowledge graph adaptation. Consequently, no manual data annotation is required to train the model. We introduce a novel iterative training strategy to facilitate the discovery of domain-specific named entities and triples. Experimental results indicate that the proposed framework can perform domain adaptation and construction of knowledge graph efficiently.
- Hongmin Cai (18 papers)
- Wenxiong Liao (9 papers)
- Zhengliang Liu (91 papers)
- Yiyang Zhang (23 papers)
- Xiaoke Huang (16 papers)
- Siqi Ding (2 papers)
- Hui Ren (37 papers)
- Zihao Wu (100 papers)
- Haixing Dai (39 papers)
- Sheng Li (219 papers)
- Lingfei Wu (135 papers)
- Ninghao Liu (98 papers)
- Quanzheng Li (122 papers)
- Tianming Liu (161 papers)
- Xiang Li (1003 papers)