Japanese Reranker Cross Encoder Base V1
This is a Japanese-trained Reranker (CrossEncoder) model for text relevance ranking tasks.
Downloads 750
Release Time : 3/29/2024
Model Overview
This model is part of the Japanese Reranker series, specifically designed for relevance ranking of Japanese texts. It is based on the CrossEncoder architecture and can efficiently evaluate the relevance between queries and documents.
Model Features
Multiple Model Sizes
Offers models ranging from xsmall to large to meet different computational resource needs
Japanese Optimization
Specifically trained and optimized for Japanese text
High Performance
Excellent performance on multiple Japanese evaluation datasets
Model Capabilities
Text Relevance Scoring
Query-Document Matching Evaluation
Japanese Text Processing
Use Cases
Information Retrieval
Search Engine Result Ranking
Re-ranking search engine results by relevance
Improves the relevance and quality of search results
Question Answering Systems
Evaluating the match between candidate answers and questions
Enhances the accuracy of QA systems
Content Recommendation
Article Recommendation
Recommending relevant articles based on user queries
Improves the relevance of recommended content
Featured Recommended AI Models