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Ko Reranker V1.1

Developed by sigridjineth
A Korean reranking model fine-tuned from Alibaba-NLP/gte-multilingual-reranker-base, optimized for text relevance in search and Q&A scenarios
Downloads 234
Release Time : 12/11/2024

Model Overview

This model specializes in Korean text reranking tasks, enhancing semantic understanding through integration of multiple public datasets and advanced training techniques

Model Features

Hard Negative Sample Mining
Incorporates BAAI/bge-m3 to mine challenging negative samples, enhancing the model's ability to distinguish subtle semantic differences
Teacher-Student Distillation
Uses BAAI/bge-reranker-v2.5-gemma2-lightweight as teacher model for knowledge distillation
Multi-source Data Training
Integrates 5 Korean public datasets (328K triplets) covering diverse topics and linguistic styles

Model Capabilities

Text Relevance Scoring
Search Result Optimization
Q&A System Answer Ranking
Content Recommendation Optimization

Use Cases

Information Retrieval
Korean Search Engine Optimization
Reranking Korean search engine results
Achieves 80.7% top1 accuracy on AutoRAG Benchmark
Q&A Systems
Candidate Answer Ranking
Relevance ranking for multiple candidate answers in Q&A systems
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