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Relation Extraction On Ace 2005

Metrics

Cross Sentence
Relation classification F1

Results

Performance results of various models on this benchmark

Model Name
Cross Sentence
Relation classification F1
Paper TitleRepository
Dual Pointer Network(multi-head)No80.8Dual Pointer Network for Fast Extraction of Multiple Relations in a Sentence-
Multi-turn QANo-Entity-Relation Extraction as Multi-Turn Question Answering-
RNN+CNNNo67.7Combining Neural Networks and Log-linear Models to Improve Relation Extraction-
SPTreeNo-End-to-End Relation Extraction using LSTMs on Sequences and Tree Structures-
TablERTNo-Named Entity Recognition and Relation Extraction using Enhanced Table Filling by Contextualized Representations-
MRC4ERE++No-Asking Effective and Diverse Questions: A Machine Reading Comprehension based Framework for Joint Entity-Relation Extraction
MGENo-A Multi-Gate Encoder for Joint Entity and Relation Extraction-
HySPANo-HySPA: Hybrid Span Generation for Scalable Text-to-Graph Extraction-
ASP+T5-3BYes-Autoregressive Structured Prediction with Language Models-
Walk-based modelNo64.2A Walk-based Model on Entity Graphs for Relation Extraction-
DYGIE++Yes-Entity, Relation, and Event Extraction with Contextualized Span Representations-
Table-SequenceNo-Two are Better than One: Joint Entity and Relation Extraction with Table-Sequence Encoders-
PL-MarkerYes-Packed Levitated Marker for Entity and Relation Extraction-
CNNNo61.3--
Dual Pointer NetworkNo80.5Relation Extraction among Multiple Entities Using a Dual Pointer Network with a Multi-Head Attention Mechanism-
GoLLIE--GoLLIE: Annotation Guidelines improve Zero-Shot Information-Extraction-
MRTNo-Extracting Entities and Relations with Joint Minimum Risk Training-
Joint w/ GlobalNo---
Span-levelNo-Span-Level Model for Relation Extraction-
Hierarchical Multi-taskNo-A Hierarchical Multi-task Approach for Learning Embeddings from Semantic Tasks-
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Relation Extraction On Ace 2005 | SOTA | HyperAI