Data2Text Studio: Automated Text Generation from Structured Data
- Longxu Dou ,
- Guanghui Qin ,
- Jinpeng Wang ,
- Jin-Ge Yao ,
- Chin-Yew Lin
Empirical Methods in Natural Language Processing |
Published by Association for Computational Linguistics
DOI | Publication | Publication | Publication
Data2Text Studio is a platform for automated text generation from structured data. It is equipped with a Semi-HMMs model to extract high-quality templates and corresponding trigger conditions from parallel data automatically, which improves the interactivity and interpretability of the generated text. In addition, several easy-to-use tools are provided for developers to edit templates of pre-trained models, and APIs are released for developers to call the pre-trained model to generate texts in third-party applications. We conduct experiments on RotoWire datasets for template extraction and text generation. The results show that our model achieves improvements on both tasks.