Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Natural Language Comprehension with the EpiReader

About

We present the EpiReader, a novel model for machine comprehension of text. Machine comprehension of unstructured, real-world text is a major research goal for natural language processing. Current tests of machine comprehension pose questions whose answers can be inferred from some supporting text, and evaluate a model's response to the questions. The EpiReader is an end-to-end neural model comprising two components: the first component proposes a small set of candidate answers after comparing a question to its supporting text, and the second component formulates hypotheses using the proposed candidates and the question, then reranks the hypotheses based on their estimated concordance with the supporting text. We present experiments demonstrating that the EpiReader sets a new state-of-the-art on the CNN and Children's Book Test machine comprehension benchmarks, outperforming previous neural models by a significant margin.

Adam Trischler, Zheng Ye, Xingdi Yuan, Kaheer Suleman• 2016

Related benchmarks

TaskDatasetResultRank
Machine ComprehensionCNN (val)
Accuracy0.734
80
Machine ComprehensionCNN (test)
Accuracy74
77
Machine ComprehensionCBT-CN (test)
Accuracy70.6
56
Machine ComprehensionCBT NE (test)
Accuracy71.8
56
Machine ComprehensionCBT-CN (val)
Accuracy73.6
37
Machine ComprehensionCBT-NE (val)
Accuracy76.6
37
Question AnsweringCNN (test)
Accuracy74
24
Machine ComprehensionCBT (test)
Named Entities69.7
12
Reading ComprehensionChildren's Book Test (CBT) Common Noun (CN) (dev)
Accuracy73.6
12
Reading ComprehensionChildren's Book Test (CBT) Named Entity (NE) (dev)
Accuracy76.6
12
Showing 10 of 10 rows

Other info

Follow for update