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Rebel Large

Developed by Babelscape
REBEL is a BART-based sequence-to-sequence model for end-to-end relation extraction, supporting over 200 different relation types.
Downloads 37.57k
Release Time : 3/2/2022

Model Overview

REBEL simplifies the process of extracting relation triples from raw text by redefining relation extraction as a sequence-to-sequence task. It uses an autoregressive sequence-to-sequence model to directly extract relation triples from text, supporting various applications such as knowledge base population and fact-checking.

Model Features

End-to-end relation extraction
Simplifies the relation extraction task into a sequence-to-sequence task, directly generating relation triples from text.
Multi-relation type support
Supports over 200 different relation types, suitable for a wide range of information extraction scenarios.
High performance
Achieves state-of-the-art performance in multiple relation extraction benchmarks.

Model Capabilities

Relation extraction
Entity-relation recognition
Knowledge base population

Use Cases

Knowledge base construction
Knowledge base population
Extracts relation triples from unstructured text to populate or validate knowledge bases.
Improves the coverage and accuracy of knowledge bases.
Information extraction
Fact-checking
Extracts relation triples from text to verify the accuracy of facts.
Supports automated fact-checking processes.
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