SOTAVerified

Reading Comprehension

Most current question answering datasets frame the task as reading comprehension where the question is about a paragraph or document and the answer often is a span in the document.

Some specific tasks of reading comprehension include multi-modal machine reading comprehension and textual machine reading comprehension, among others. In the literature, machine reading comprehension can be divide into four categories: cloze style, multiple choice, span prediction, and free-form answer. Read more about each category here.

Benchmark datasets used for testing a model's reading comprehension abilities include MovieQA, ReCoRD, and RACE, among others.

The Machine Reading group at UCL also provides an overview of reading comprehension tasks.

Figure source: A Survey on Machine Reading Comprehension: Tasks, Evaluation Metrics and Benchmark Datasets

Papers

Showing 776800 of 1760 papers

TitleStatusHype
Attacks against Abstractive Text Summarization Models through Lead Bias and Influence Functions0
Identifying Supporting Facts for Multi-hop Question Answering with Document Graph Networks0
Consensus Attention-based Neural Networks for Chinese Reading Comprehension0
An Analysis of Prerequisite Skills for Reading Comprehension0
IBERT: Idiom Cloze-style reading comprehension with Attention0
Human Needs Categorization of Affective Events Using Labeled and Unlabeled Data0
HRCA+: Advanced Multiple-choice Machine Reading Comprehension Method0
How You Ask Matters: The Effect of Paraphrastic Questions to BERT Performance on a Clinical SQuAD Dataset0
How Well Do Multi-hop Reading Comprehension Models Understand Date Information?0
How to Pre-Train Your Model? Comparison of Different Pre-Training Models for Biomedical Question Answering0
Computing Semantic Text Similarity Using Rich Features0
A Tagging Approach to Identify Complex Constituents for Text Simplification0
Analyzing Zero-shot Cross-lingual Transfer in Supervised NLP Tasks0
Advances in Multi-turn Dialogue Comprehension: A Survey0
IdeaReader: A Machine Reading System for Understanding the Idea Flow of Scientific Publications0
Computational Approaches to Sentence Completion0
Identifying Where to Focus in Reading Comprehension for Neural Question Generation0
How Much Reading Does Reading Comprehension Require? A Critical Investigation of Popular Benchmarks0
A Systematic Classification of Knowledge, Reasoning, and Context within the ARC Dataset0
I Do Not Understand What I Cannot Define: Automatic Question Generation With Pedagogically-Driven Content Selection0
IIE-NLP-Eyas at SemEval-2021 Task 4: Enhancing PLM for ReCAM with Special Tokens, Re-Ranking, Siamese Encoders and Back Translation0
How Context Affects Language Models' Factual Predictions0
IIT-KGP at COIN 2019: Using pre-trained Language Models for modeling Machine Comprehension0
HoT: Highlighted Chain of Thought for Referencing Supporting Facts from Inputs0
Compressing Long Context for Enhancing RAG with AMR-based Concept Distillation0
Show:102550
← PrevPage 32 of 71Next →

Benchmark Results

#ModelMetricClaimedVerifiedStatus
1Rational Reasoner / IDOLTest80.6Unverified
2AMR-LE-EnsembleTest80Unverified
3MERIt(MERIt-deberta-v2-xxlarge )Test79.3Unverified
4MERIt-deberta-v2-xxlarge deberta.v2.xxlarge.path.override_True.norm_1.1.0.w2.A100.cp200.s42Test79.3Unverified
5Knowledge modelTest79.2Unverified
6DeBERTa-v2-xxlarge-AMR-LE-ContrapositionTest77.2Unverified
7LReasoner ensembleTest76.1Unverified
8ELECTRA and ALBERTTest71Unverified
9WWZTest69.7Unverified
10xlnet-large-uncased [extended data]Test69.3Unverified
#ModelMetricClaimedVerifiedStatus
1ALBERT (Ensemble)Accuracy91.4Unverified
2Megatron-BERT (ensemble)Accuracy90.9Unverified
3ALBERTxxlarge+DUMA(ensemble)Accuracy89.8Unverified
4Megatron-BERTAccuracy89.5Unverified
5XLNetAccuracy (Middle)88.6Unverified
6DeBERTalargeAccuracy86.8Unverified
7B10-10-10Accuracy85.7Unverified
8RoBERTaAccuracy83.2Unverified
9Orca 2-13BAccuracy82.87Unverified
10Orca 2-7BAccuracy80.79Unverified
#ModelMetricClaimedVerifiedStatus
1Golden TransformerAverage F10.94Unverified
2MT5 LargeAverage F10.84Unverified
3ruRoberta-large finetuneAverage F10.83Unverified
4ruT5-large-finetuneAverage F10.82Unverified
5Human BenchmarkAverage F10.81Unverified
6ruT5-base-finetuneAverage F10.77Unverified
7ruBert-large finetuneAverage F10.76Unverified
8ruBert-base finetuneAverage F10.74Unverified
9RuGPT3XL few-shotAverage F10.74Unverified
10RuGPT3LargeAverage F10.73Unverified
#ModelMetricClaimedVerifiedStatus
1RoBERTa-LargeOverall: F164.4Unverified
2BERT-LargeOverall: F162.7Unverified
3BiDAFOverall: F128.5Unverified
#ModelMetricClaimedVerifiedStatus
1BERTMSE0.05Unverified
#ModelMetricClaimedVerifiedStatus
1BERT pretrained on MIMIC-IIIAnswer F163.55Unverified