Using Cross-Encoders as reranker in multistage vector search
Published:Aug 9, 2022 00:00
•1 min read
•Weaviate
Analysis
The article introduces the application of cross-encoders in vector search, specifically focusing on their role as rerankers. It highlights the potential benefits of combining cross-encoders with other models like bi-encoders to enhance the search experience. The content suggests a technical focus on machine learning models and their practical application in information retrieval.
Key Takeaways
- •Focuses on the use of cross-encoders for reranking in vector search.
- •Mentions the combination of cross-encoders with other models (bi-encoders).
- •Implies a technical discussion of machine learning models.
Reference
“Learn about bi-encoder and cross-encoder machine learning models, and why combining them could improve the vector search experience.”