Title
Reinforcement Learning Based Graph-to-Sequence Model for Natural Question Generation
Abstract
Natural question generation (QG) aims to generate questions from a passage and an answer. Previous works on QG either (i) ignore the rich structure information hidden in text, (ii) solely rely on cross-entropy loss that leads to issues like exposure bias and inconsistency between train/test measurement, or (iii) fail to fully exploit the answer information. To address these limitations, in this paper, we propose a reinforcement learning (RL) based graph-to-sequence (Graph2Seq) model for QG. Our model consists of a Graph2Seq generator with a novel Bidirectional Gated Graph Neural Network based encoder to embed the passage, and a hybrid evaluator with a mixed objective combining both cross-entropy and RL losses to ensure the generation of syntactically and semantically valid text. We also introduce an effective Deep Alignment Network for incorporating the answer information into the passage at both the word and contextual levels. Our model is end-to-end trainable and achieves new state-of-the-art scores, outperforming existing methods by a significant margin on the standard SQuAD benchmark.
Year
Venue
Keywords
2020
ICLR
deep learning, reinforcement learning, graph neural networks, natural language processing, question generation
DocType
Citations 
PageRank 
Conference
2
0.36
References 
Authors
40
3
Name
Order
Citations
PageRank
Yu Chen1144.27
Lingfei Wu211632.05
Mohammed Javeed Zaki37972536.24