R

Re2g Qry Encoder Fever

Developed by ibm-research
Re2G is a generative model combining neural initial retrieval and reranking for knowledge-intensive tasks. This question encoder is a component of the Re2G system, used to encode questions into vectors for retrieval.
Downloads 17
Release Time : 8/1/2022

Model Overview

This model is the query encoding component of the Re2G system, based on the DPR architecture, designed to encode natural language questions into vector representations for information retrieval and reranking in collaboration with passage encoders.

Model Features

End-to-End Training
Joint training of initial retrieval, reranking, and generator through knowledge distillation methods
Multi-source Retrieval Integration
Capable of integrating retrieval results from different sources such as BM25 and neural initial retrieval
Optimized for Knowledge-Intensive Tasks
Specifically designed for tasks requiring extensive knowledge, such as Q&A and fact-checking

Model Capabilities

Question Encoding
Information Retrieval
Retrieval Result Reranking

Use Cases

Knowledge-Intensive Tasks
Zero-shot Slot Filling
Filling structured slots without specific training data
9%-34% improvement over previous SOTA
Fact-Checking
Verifying the authenticity of claims
Question Answering Systems
Answering complex questions requiring external knowledge
Featured Recommended AI Models
AIbase
Empowering the Future, Your AI Solution Knowledge Base
Š 2025AIbase