Gated-Attention Readers for Text Comprehension

06/05/2016
by   Bhuwan Dhingra, et al.
0

In this paper we study the problem of answering cloze-style questions over documents. Our model, the Gated-Attention (GA) Reader, integrates a multi-hop architecture with a novel attention mechanism, which is based on multiplicative interactions between the query embedding and the intermediate states of a recurrent neural network document reader. This enables the reader to build query-specific representations of tokens in the document for accurate answer selection. The GA Reader obtains state-of-the-art results on three benchmarks for this task--the CNN & Daily Mail news stories and the Who Did What dataset. The effectiveness of multiplicative interaction is demonstrated by an ablation study, and by comparing to alternative compositional operators for implementing the gated-attention. The code is available at https://github.com/bdhingra/ga-reader.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
05/26/2018

Dependent Gated Reading for Cloze-Style Question Answering

We present a novel deep learning architecture to address the cloze-style...
research
06/07/2016

Iterative Alternating Neural Attention for Machine Reading

We propose a novel neural attention architecture to tackle machine compr...
research
04/24/2017

Ruminating Reader: Reasoning with Gated Multi-Hop Attention

To answer the question in machine comprehension (MC) task, the models ne...
research
03/20/2018

GaAN: Gated Attention Networks for Learning on Large and Spatiotemporal Graphs

We propose a new network architecture, Gated Attention Networks (GaAN), ...
research
03/04/2016

Text Understanding with the Attention Sum Reader Network

Several large cloze-style context-question-answer datasets have been int...

Please sign up or login with your details

Forgot password? Click here to reset