Sciweavers

ACL
2015

Learning Answer-Entailing Structures for Machine Comprehension

8 years 7 months ago
Learning Answer-Entailing Structures for Machine Comprehension
Understanding open-domain text is one of the primary challenges in NLP. Machine comprehension evaluates the system’s ability to understand text through a series of question-answering tasks on short pieces of text such that the correct answer can be found only in the given text. For this task, we posit that there is a hidden (latent) structure that explains the relation between the question, correct answer, and text. We call this the answer-entailing structure; given the structure, the correctness of the answer is evident. Since the structure is latent, it must be inferred. We present a unified max-margin framework that learns to find these hidden structures (given a corpus of question-answer pairs), and uses what it learns to answer machine comprehension questions on novel texts. We extend this framework to incorporate multi-task learning on the different subtasks that are required to perform machine comprehension. Evaluation on a publicly available dataset shows that our framewor...
Mrinmaya Sachan, Kumar Dubey, Eric P. Xing, Matthe
Added 13 Apr 2016
Updated 13 Apr 2016
Type Journal
Year 2015
Where ACL
Authors Mrinmaya Sachan, Kumar Dubey, Eric P. Xing, Matthew Richardson
Comments (0)