Dependent Gated Reading for Cloze-Style Question Answering

05/26/2018
by   Reza Ghaeini, et al.
0

We present a novel deep learning architecture to address the cloze-style question answering task. Existing approaches employ reading mechanisms that do not fully exploit the interdependency between the document and the query. In this paper, we propose a novel dependent gated reading bidirectional GRU network (DGR) to efficiently model the relationship between the document and the query during encoding and decision making. Our evaluation shows that DGR obtains highly competitive performance on well-known machine comprehension benchmarks such as the Children's Book Test (CBT-NE and CBT-CN) and Who DiD What (WDW, Strict and Relaxed). Finally, we extensively analyze and validate our model by ablation and attention studies.

READ FULL TEXT

page 3

page 9

page 12

page 13

page 14

page 15

page 16

page 17

research
02/15/2018

DR-BiLSTM: Dependent Reading Bidirectional LSTM for Natural Language Inference

We present a novel deep learning architecture to address the natural lan...
research
06/05/2016

Gated-Attention Readers for Text Comprehension

In this paper we study the problem of answering cloze-style questions ov...
research
06/07/2016

Iterative Alternating Neural Attention for Machine Reading

We propose a novel neural attention architecture to tackle machine compr...
research
07/28/2017

MEMEN: Multi-layer Embedding with Memory Networks for Machine Comprehension

Machine comprehension(MC) style question answering is a representative p...
research
03/04/2016

Text Understanding with the Attention Sum Reader Network

Several large cloze-style context-question-answer datasets have been int...
research
05/14/2019

Multi-step Retriever-Reader Interaction for Scalable Open-domain Question Answering

This paper introduces a new framework for open-domain question answering...

Please sign up or login with your details

Forgot password? Click here to reset