赞
踩
今日ACL2021放出长文接受列表了(可点击【阅读原文】查阅),JayJay对信息抽取论文做了分类汇总,希望对大家有所帮助~
“实体抽取主要涉及嵌套NER、非连续NER、中文&多模NER、少样本NER、实体标准化、实体分类等;
A Span-Based Model for Joint Overlapped and Discontinuous Named Entity Recognition
Locate and Label: A Two-stage Identifier for Nested Named Entity Recognition
Nested Named Entity Recognition via Explicitly Excluding the Influence of the Best Path
Discontinuous Named Entity Recognition as Maximal Clique Discovery
A Unified Generative Framework for Various NER Subtasks
Subsequence Based Deep Active Learning for Named Entity Recognition
Few-NERD: A Few-shot Named Entity Recognition Dataset
Named Entity Recognition with Small Strongly Labeled and Large Weakly Labeled Data
Weakly Supervised Named Entity Tagging with Learnable Logical Rules
Leveraging Type Descriptions for Zero-shot Named Entity Recognition and Classification
Learning from Miscellaneous Other-Class Words for Few-shot Named Entity Recognition
MECT: Multi-Metadata Embedding based Cross-Transformer for Chinese Named Entity Recognition
A Large-Scale Chinese Multimodal NER Dataset with Speech Clues
An End-to-End Progressive Multi-Task Learning Framework for Medical Named Entity Recognition and Normalization
A Neural Transition-based Joint Model for Disease Named Entity Recognition and Normalization
Modeling Fine-Grained Entity Types with Box Embeddings
Ultra-Fine Entity Typing with Weak Supervision from a Masked Language Model
SpanNER: Named Entity Re-/Recognition as Span Prediction
Improving Named Entity Recognition by External Context Retrieving and Cooperative Learning
Modularized Interaction Network for Named Entity Recognition
BERTifying the Hidden Markov Model for Multi-Source Weakly Supervised Named Entity Recognition
De-biasing Distantly Supervised Named Entity Recognition via Causal Intervention
Crowdsourcing Learning as Domain Adaptation: A Case Study on Named Entity Recognition
LNN-EL: A Neuro-Symbolic Approach to Short-text Entity Linking
“关系抽取主要涉及远程监督抽取、联合抽取、开放抽取、事件关系抽取等。
CIL: Contrastive Instance Learning Framework for Distantly Supervised Relation Extraction
How Knowledge Graph and Attention Help? A Qualitative Analysis into Bag-level Relation Extraction
SENT: Sentence-level Distant Relation Extraction via Negative Training
Revisiting the Negative Data of Distantly Supervised Relation Extraction
Joint Biomedical Entity and Relation Extraction with Knowledge-Enhanced Collective Inference
UniRE: A Unified Label Space for Entity Relation Extraction
PRGC: Potential Relation and Global Correspondence Based Joint Relational Triple Extraction
Dependency-driven Relation Extraction with Attentive Graph Convolutional Networks
CoRI: Collective Relation Integration with Data Augmentation for Open Information Extraction
Element Intervention for Open Relation Extraction
From Discourse to Narrative: Knowledge Projection for Event Relation Extraction
Refining Sample Embeddings with Relation Prototypes to Enhance Continual Relation Extraction
Capturing Event Argument Interaction via A Bi-Directional Entity-Level Recurrent Decoder
Verb Knowledge Injection for Multilingual Event Processing
OntoED: Low-resource Event Detection with Ontology Embedding
Document-level Event Extraction via Heterogeneous Graph-based Interaction Model with a Tracker
LearnDA: Learnable Knowledge-Guided Data Augmentation for Event Causality Identification
MLBiNet: A Cross-Sentence Collective Event Detection Network
Unleash GPT-2 Power for Event Detection
Document-Level Event Argument Extraction via Optimal
Document-level Event Extraction via Parallel Prediction Networks
Trigger is Not Sufficient: Exploiting Frame-aware Knowledge for Implicit Event Argument Extraction
The Possible, the Plausible, and the Desirable: Event-Based Modality Detection for Language Processing
Text2Event: Controllable Sequence-to-Structure Generation for End-to-end Event Extraction
ERICA: Improving Entity and Relation Understanding for Pre-trained Language Models via Contrastive Learning
CLEVE: Contrastive Pre-training for Event Extraction
想和你一起学习进步!『NewBeeNLP』目前已经建立了多个不同方向交流群(机器学习 / 深度学习 / 自然语言处理 / 搜索推荐 / 图网络 / 面试交流 / 等),名额有限,赶紧添加下方微信加入一起讨论交流吧!(注意一定要备注信息才能通过)
- END -
对比学习还能这样用:字节推出真正的多到多翻译模型mRASP2
Copyright © 2003-2013 www.wpsshop.cn 版权所有,并保留所有权利。