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Text2graph R1 Qwen2.5 0.5b

Developed by Ihor
A text-to-graph information extraction model based on Qwen-2.5-0.5B, jointly trained through reinforcement learning (GRPO) and supervised learning.
Downloads 199
Release Time : 1/30/2025

Model Overview

This model is specifically designed to extract named entities and relationships from text and convert them into structured graph data. Supports JSON format output, suitable for knowledge graph construction and information extraction tasks.

Model Features

Reinforcement Learning Optimization
Trained using Group Relative Policy Optimization (GRPO) combined with supervised learning to enhance model performance.
Structured Output
Supports JSON format output, including structured representations of entities and relationships for easy processing and analysis.
Multi-Task Support
Simultaneously supports named entity recognition, relation extraction, and text-to-graph conversion tasks, suitable for complex information extraction scenarios.

Model Capabilities

Text generation
Named entity recognition
Relation extraction
Text-to-graph conversion

Use Cases

Knowledge Graph Construction
Extracting entities and relationships from news text
Analyze news text to identify entities such as people, locations, organizations, and their relationships, constructing a knowledge graph.
Generates structured JSON data containing entity types, entity texts, and their relationships.
Information Extraction
Academic literature analysis
Extract key concepts, methods, and conclusions from academic papers to build domain-specific knowledge graphs.
Supports automated literature reviews and knowledge discovery.
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