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Machine Reading Comprehension

Machine Reading Comprehension is one of the key problems in Natural Language Understanding, where the task is to read and comprehend a given text passage, and then answer questions based on it.

Source: Making Neural Machine Reading Comprehension Faster

Papers

Showing 176200 of 555 papers

TitleStatusHype
OpenQA: Hybrid QA System Relying on Structured Knowledge Base as well as Non-structured Data0
Native Chinese Reader: A Dataset Towards Native-Level Chinese Machine Reading Comprehension0
From Good to Best: Two-Stage Training for Cross-lingual Machine Reading Comprehension0
Zero-Shot Cross-Lingual Machine Reading Comprehension via Inter-sentence Dependency GraphCode0
MRCLens: an MRC Dataset Bias Detection Toolkit0
EveMRC: A Two-stage Evidence Modeling For Multi-choice Machine Reading Comprehension0
Models can use keywords to answer questions that human cannot0
On the Robustness of Reading Comprehension Models to Entity Renaming0
What Makes Machine Reading Comprehension Questions Difficult? Investigating Variation in Passage Sources and Question Types0
Unsupervised Open-Domain Question Answering with Higher Answerability0
Context-Paraphrase Enhanced Commonsense Question Answering0
A Graph Fusion Approach to Cross-Lingual Machine Reading Comprehension0
Understanding Attention in Machine Reading Comprehension0
ViQA-COVID: COVID-19 Machine Reading Comprehension Dataset for Vietnamese0
UQuAD1.0: Development of an Urdu Question Answering Training Data for Machine Reading Comprehension0
Have You Seen That Number? Investigating Extrapolation in Question Answering Models0
ESTER: A Machine Reading Comprehension Dataset for Reasoning about Event Semantic Relations0
Machine Reading Comprehension as Data Augmentation: A Case Study on Implicit Event Argument Extraction0
Enhancing Multiple-choice Machine Reading Comprehension by Punishing Illogical Interpretations0
Self Question-answering: Aspect-based Sentiment Analysis by Role Flipped Machine Reading ComprehensionCode0
What If Sentence-hood is Hard to Define: A Case Study in Chinese Reading Comprehension0
Challenges in Procedural Multimodal Machine Comprehension:A Novel Way To Benchmark0
Know your tools well: Better and faster QA with synthetic examples0
A Unified Abstractive Model for Generating Question-Answer Pairs0
Cooperative Semi-Supervised Transfer Learning of Machine Reading Comprehension0
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