OAG-BERT: Towards A Unified Backbone Language Model For Academic Knowledge Services
Abstract
Academic knowledge services have substantially facilitated the development of the science enterprise by providing a plenitude of efficient research tools. However, many applications highly depend on ad-hoc models and expensive human labeling to understand scientific contents, hindering deployments into real products. To build a unified backbone language model for different knowledge-intensive academic applications, we pre-train an academic language model OAG-BERT that integrates both the heterogeneous entity knowledge and scientific corpora in the Open Academic Graph (OAG) -- the largest public academic graph to date. In OAG-BERT, we develop strategies for pre-training text and entity data along with zero-shot inference techniques. In OAG-BERT, we develop strategies for pre-training text and entity data along with zero-shot inference techniques. Its zero-shot capability furthers the path to mitigate the need of expensive annotations. OAG-BERT has been deployed for real-world applications, such as the reviewer recommendation function for National Nature Science Foundation of China (NSFC) -- one of the largest funding agencies in China -- and paper tagging in AMiner. All codes and pre-trained models are available via the CogDL toolkit.
Keywords
Cite
@article{arxiv.2103.02410,
title = {OAG-BERT: Towards A Unified Backbone Language Model For Academic Knowledge Services},
author = {Xiao Liu and Da Yin and Jingnan Zheng and Xingjian Zhang and Peng Zhang and Hongxia Yang and Yuxiao Dong and Jie Tang},
journal= {arXiv preprint arXiv:2103.02410},
year = {2022}
}
Comments
Accepted to KDD 2022