Expand, Rerank, and Retrieve: Query Reranking for Open-Domain Question Answering

05/26/2023
by   Yung-Sung Chuang, et al.
0

We propose EAR, a query Expansion And Reranking approach for improving passage retrieval, with the application to open-domain question answering. EAR first applies a query expansion model to generate a diverse set of queries, and then uses a query reranker to select the ones that could lead to better retrieval results. Motivated by the observation that the best query expansion often is not picked by greedy decoding, EAR trains its reranker to predict the rank orders of the gold passages when issuing the expanded queries to a given retriever. By connecting better the query expansion model and retriever, EAR significantly enhances a traditional sparse retrieval method, BM25. Empirically, EAR improves top-5/20 accuracy by 3-8 and 5-10 points in in-domain and out-of-domain settings, respectively, when compared to a vanilla query expansion model, GAR, and a dense retrieval model, DPR.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/17/2020

Generation-Augmented Retrieval for Open-domain Question Answering

Conventional sparse retrieval methods such as TF-IDF and BM25 are simple...
research
12/25/2018

Sequence to Sequence Learning for Query Expansion

Using sequence to sequence algorithms for query expansion has not been e...
research
02/23/2023

MFBE: Leveraging Multi-Field Information of FAQs for Efficient Dense Retrieval

In the domain of question-answering in NLP, the retrieval of Frequently ...
research
06/20/2020

Improving Query Safety at Pinterest

Query recommendations in search engines is a double edged sword, with un...
research
06/28/2022

Simple and Effective Knowledge-Driven Query Expansion for QA-Based Product Attribute Extraction

A key challenge in attribute value extraction (AVE) from e-commerce site...
research
05/14/2019

Multi-step Retriever-Reader Interaction for Scalable Open-domain Question Answering

This paper introduces a new framework for open-domain question answering...
research
07/30/2020

NeuralQA: A Usable Library for Question Answering (Contextual Query Expansion + BERT) on Large Datasets

Existing tools for Question Answering (QA) have challenges that limit th...

Please sign up or login with your details

Forgot password? Click here to reset