Authors
Satish Indurthi, Seunghak Yu, Seohyun Back, Heriberto Cuayáhuitl
Publication date
2018/10/31
Journal
Proceedings of the 2018 Conference on Empirical Methods in Natural Language Processing
Pages
570-575
Description
In recent years many deep neural networks have been proposed to solve Reading Comprehension (RC) tasks. Most of these models suffer from reasoning over long documents and do not trivially generalize to cases where the answer is not present as a span in a given document. We present a novel neural-based architecture that is capable of extracting relevant regions based on a given question-document pair and generating a well-formed answer. To show the effectiveness of our architecture, we conducted several experiments on the recently proposed and challenging RC dataset ‘NarrativeQA’. The proposed architecture outperforms state-of-the-art results by 12.62%(ROUGE-L) relative improvement.
Total citations
201920202021202220232024431433
Scholar articles