/plushcap/analysis/weaviate/weaviate-cross-encoders-as-reranker

Using Cross-Encoders as reranker in multistage vector search

What's this blog post about?

Semantic search overcomes limitations of keyword-based search by using machine learning models like Bi-Encoder and Cross-Encoder in a vector database. Bi-Encoders are fast but less accurate, while Cross-Encoders are more accurate but slower. Combining these two models can improve the search experience by first using Bi-Encoders to retrieve a list of result candidates and then using Cross-Encoders for reranking the most relevant results. This approach benefits from both efficient retrieval and high accuracy, making it suitable for large scale datasets.

Company
Weaviate

Date published
Aug. 9, 2022

Author(s)
Laura Ham

Word count
1015

Language
English

Hacker News points
None found.


By Matt Makai. 2021-2024.