SOTAVerified

Named Entity Recognition (NER)

Named Entity Recognition (NER) is a task of Natural Language Processing (NLP) that involves identifying and classifying named entities in a text into predefined categories such as person names, organizations, locations, and others. The goal of NER is to extract structured information from unstructured text data and represent it in a machine-readable format. Approaches typically use BIO notation, which differentiates the beginning (B) and the inside (I) of entities. O is used for non-entity tokens.

Example:

| Mark | Watney | visited | Mars | | --- | ---| --- | --- | | B-PER | I-PER | O | B-LOC |

( Image credit: Zalando )

Papers

Showing 17011750 of 2874 papers

TitleStatusHype
PharmaCoNER: Pharmacological Substances, Compounds and proteins Named Entity Recognition track0
Improved Differentiable Architecture Search for Language Modeling and Named Entity RecognitionCode0
Multi-Task Learning for Chemical Named Entity Recognition with Chemical Compound Paraphrasing0
A Deep Learning-Based System for PharmaCoNER0
SoulMate: Short-text author linking through Multi-aspect temporal-textual embedding0
A Survey on Recent Advances in Named Entity Recognition from Deep Learning modelsCode0
Man is to Person as Woman is to Location: Measuring Gender Bias in Named Entity RecognitionCode0
Healthcare NER Models Using Language Model Pretraining0
IPOD: An Industrial and Professional Occupations Dataset and its Applications to Occupational Data Mining and AnalysisCode0
A Semi-Automated Approach for Information Extraction, Classification and Analysis of Unstructured Data0
Comprehend Medical: a Named Entity Recognition and Relationship Extraction Web Service0
Feature-Dependent Confusion Matrices for Low-Resource NER Labeling with Noisy LabelsCode0
Training Compact Models for Low Resource Entity Tagging using Pre-trained Language Models0
Linguistically Informed Relation Extraction and Neural Architectures for Nested Named Entity Recognition in BioNLP-OST 2019Code0
Multi-hop Question Answering via Reasoning ChainsCode0
Named Entity Recognition -- Is there a glass ceiling?Code0
Improved Word Sense Disambiguation Using Pre-Trained Contextualized Word RepresentationsCode0
MTab: Matching Tabular Data to Knowledge Graph using Probability ModelsCode0
Gated Task Interaction Framework for Multi-task Sequence TaggingCode0
Language-Agnostic Syllabification with Neural Sequence LabelingCode0
Recent Advances in End-to-End Spoken Language Understanding0
Named Entity Recognition System for Sindhi Language0
On the Importance of Subword Information for Morphological Tasks in Truly Low-Resource Languages0
Improving Pre-Trained Multilingual Models with Vocabulary Expansion0
Learning A Unified Named Entity Tagger From Multiple Partially Annotated Corpora For Efficient AdaptationCode0
Classification Attention for Chinese NER0
Towards Interpretable Evaluations: A Case Study of Named Entity Recognition0
Dependency-Guided LSTM-CRF for Named Entity RecognitionCode0
Biomedical Mention Disambiguation using a Deep Learning Approach0
GNTeam at 2018 n2c2: Feature-augmented BiLSTM-CRF for drug-related entity recognition in hospital discharge summariesCode0
Portuguese Named Entity Recognition using BERT-CRFCode0
Using Chinese Glyphs for Named Entity RecognitionCode0
Named Entity Recognition with Partially Annotated Training Data0
Hierarchical Meta-Embeddings for Code-Switching Named Entity RecognitionCode0
Span-based Joint Entity and Relation Extraction with Transformer Pre-trainingCode0
Neural Correction Model for Open-Domain Named Entity RecognitionCode0
Dependency-Aware Named Entity Recognition with Relative and Global Attentions0
From English to Code-Switching: Transfer Learning with Strong Morphological CluesCode0
What Matters for Neural Cross-Lingual Named Entity Recognition: An Empirical Analysis0
Czech Text Processing with Contextual Embeddings: POS Tagging, Lemmatization, Parsing and NER0
May I Check Again? -- A simple but efficient way to generate and use contextual dictionaries for Named Entity Recognition. Application to French Legal Texts0
#MeTooMaastricht: Building a chatbot to assist survivors of sexual harassmentCode0
Nested Named Entity Recognition via Second-best Sequence Learning and DecodingCode0
From Textual Information Sources to Linked Data in the Agatha Project0
CrossWeigh: Training Named Entity Tagger from Imperfect AnnotationsCode0
Modeling Named Entity Embedding Distribution into Hypersphere0
May I Check Again? — A simple but efficient way to generate and use contextual dictionaries for Named Entity Recognition. Application to French Legal Texts.0
NSURL-2019 Task 7: Named Entity Recognition for Farsi0
Towards High Accuracy Named Entity Recognition for Icelandic0
Projecting named entity recognizers without annotated or parallel corpora0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ACE + document-contextF194.6Unverified
2LUKE 483MF194.3Unverified
3Co-regularized LUKEF194.22Unverified
4LUKE + SubRegWeigh (K-means)F194.2Unverified
5ASP+T5-3BF194.1Unverified
6FLERT XLM-RF194.09Unverified
7PL-MarkerF194Unverified
8CL-KLF193.85Unverified
9XLNet-GCNF193.82Unverified
10RoBERTa + SubRegWeigh (K-means)F193.81Unverified
#ModelMetricClaimedVerifiedStatus
1BERT-MRC+DSCF192.07Unverified
2PL-MarkerF191.9Unverified
3Baseline + BSF191.74Unverified
4Biaffine-NERF191.3Unverified
5BERT-MRCF191.11Unverified
6PIQNF190.96Unverified
7HGNF190.92Unverified
8Syn-LSTM + BERT (wo doc-context)F190.85Unverified
9DiffusionNERF190.66Unverified
10W2NERF190.5Unverified
#ModelMetricClaimedVerifiedStatus
1BioBERTF189.71Unverified
2SpanModel + SequenceLabelingModelF189.6Unverified
3SciFive-BaseF189.39Unverified
4Spark NLPF189.13Unverified
5BLSTM-CNN-Char (SparkNLP)F189.13Unverified
6KeBioLMF189.1Unverified
7CL-KLF188.96Unverified
8BioKMNER + BioBERTF188.77Unverified
9BioLinkBERT (large)F188.76Unverified
10CompactBioBERTF188.67Unverified
#ModelMetricClaimedVerifiedStatus
1CL-KLF160.45Unverified
2RoBERTa + SubRegWeigh (K-means)F160.29Unverified
3BERT-CRF (Replicated in AdaSeq)F159.69Unverified
4RoBERTa-BiLSTM-contextF159.61Unverified
5BERT + RegLERF158.9Unverified
6TNER -xlm-r-largeF158.5Unverified
7HGNF157.41Unverified
8ASA + RoBERTaF157.3Unverified
9BERTweetF156.5Unverified
10MINERF154.86Unverified
#ModelMetricClaimedVerifiedStatus
1Ours: cross-sentence ALBF190.9Unverified
2GoLLIEF189.6Unverified
3PromptNER [RoBERTa-large]F188.26Unverified
4PIQNF187.42Unverified
5PromptNER [BERT-large]F187.21Unverified
6DiffusionNERF186.93Unverified
7BERT-MRCF186.88Unverified
8UniNER-7BF186.69Unverified
9Locate and LabelF186.67Unverified
10BoningKnifeF185.46Unverified
#ModelMetricClaimedVerifiedStatus
1KeBioLMF182Unverified
2BLSTM-CNN-Char (SparkNLP)F181.29Unverified
3Spark NLPF181.29Unverified
4BINDERF180.3Unverified
5BioMobileBERTF180.13Unverified
6BioLinkBERT (large)F180.06Unverified
7DistilBioBERTF179.97Unverified
8CompactBioBERTF179.88Unverified
9BioDistilBERTF179.1Unverified
10PubMedBERT uncasedF179.1Unverified
#ModelMetricClaimedVerifiedStatus
1BINDERF191.9Unverified
2ConNERF191.3Unverified
3CL-L2F190.99Unverified
4aimpedF190.95Unverified
5BertForTokenClassification (Spark NLP)F190.89Unverified
6BioLinkBERT (large)F190.22Unverified
7ELECTRAMedF190.03Unverified
8BLSTM-CNN-Char (SparkNLP)F189.73Unverified
9Spark NLPF189.73Unverified
10UniNER-7BF189.34Unverified