Improving Question Generation with Sentence-level Semantic Matching and Answer Position Inferring (1912.00879v3)
Abstract: Taking an answer and its context as input, sequence-to-sequence models have made considerable progress on question generation. However, we observe that these approaches often generate wrong question words or keywords and copy answer-irrelevant words from the input. We believe that lacking global question semantics and exploiting answer position-awareness not well are the key root causes. In this paper, we propose a neural question generation model with two concrete modules: sentence-level semantic matching and answer position inferring. Further, we enhance the initial state of the decoder by leveraging the answer-aware gated fusion mechanism. Experimental results demonstrate that our model outperforms the state-of-the-art (SOTA) models on SQuAD and MARCO datasets. Owing to its generality, our work also improves the existing models significantly.
- Xiyao Ma (6 papers)
- Qile Zhu (8 papers)
- Yanlin Zhou (19 papers)
- Xiaolin Li (54 papers)
- Dapeng Wu (52 papers)