Weak Supervision Enhanced Generative Network for Question Generation
Abstract
Automatic question generation according to an answer within the given passage is useful for many applications, such as question answering system, dialogue system, etc. Current neural-based methods mostly take two steps which extract several important sentences based on the candidate answer through manual rules or supervised neural networks and then use an encoder-decoder framework to generate questions about these sentences. These approaches neglect the semantic relations between the answer and the context of the whole passage which is sometimes necessary for answering the question. To address this problem, we propose the Weak Supervision Enhanced Generative Network (WeGen) which automatically discovers relevant features of the passage given the answer span in a weakly supervised manner to improve the quality of generated questions. More specifically, we devise a discriminator, Relation Guider, to capture the relations between the whole passage and the associated answer and then the Multi-Interaction mechanism is deployed to transfer the knowledge dynamically for our question generation system. Experiments show the effectiveness of our method in both automatic evaluations and human evaluations.
Cite
@article{arxiv.1907.00607,
title = {Weak Supervision Enhanced Generative Network for Question Generation},
author = {Yutong Wang and Jiyuan Zheng and Qijiong Liu and Zhou Zhao and Jun Xiao and Yueting Zhuang},
journal= {arXiv preprint arXiv:1907.00607},
year = {2019}
}
Comments
Published as a conference paper at IJCAI2019