Japanese Reranker Cross Encoder Xsmall V1
This is a Japanese-trained Reranker (Cross-Encoder) model for text ranking tasks.
Downloads 7,041
Release Time : 3/28/2024
Model Overview
This model is a Japanese text reranker (Cross-Encoder) specifically designed for relevance ranking of Japanese texts.
Model Features
Japanese Optimization
Specially trained for Japanese texts, excelling in Japanese text ranking tasks
Multiple Size Options
Offers models ranging from xsmall to large to meet different computational resource needs
High Performance
Outperforms similar models on multiple Japanese evaluation datasets
Model Capabilities
Japanese text relevance ranking
Cross-document relevance scoring
Query-passage matching scoring
Use Cases
Information Retrieval
Search Engine Result Ranking
Re-ranking search engine results by relevance
Improves search result relevance
QA Systems
Ranking candidate answers in QA systems
Improves QA system accuracy
Content Recommendation
Related Content Recommendation
Recommending related content based on user queries
Improves recommendation relevance
Featured Recommended AI Models