A Neural Comprehensive Ranker (NCR) for Open-Domain Question Answering

09/29/2017
by   Bin Bi, et al.
0

This paper proposes a novel neural machine reading model for open-domain question answering at scale. Existing machine comprehension models typically assume that a short piece of relevant text containing answers is already identified and given to the models, from which the models are designed to extract answers. This assumption, however, is not realistic for building a large-scale open-domain question answering system which requires both deep text understanding and identifying relevant text from corpus simultaneously. In this paper, we introduce Neural Comprehensive Ranker (NCR) that integrates both passage ranking and answer extraction in one single framework. A Q&A system based on this framework allows users to issue an open-domain question without needing to provide a piece of text that must contain the answer. Experiments show that the unified NCR model is able to outperform the states-of-the-art in both retrieval of relevant text and answer extraction.

READ FULL TEXT
research
10/01/2018

Ranking Paragraphs for Improving Answer Recall in Open-Domain Question Answering

Recently, open-domain question answering (QA) has been combined with mac...
research
11/17/2022

Open-Domain Conversational Question Answering with Historical Answers

Open-domain conversational question answering can be viewed as two tasks...
research
07/12/2017

Quasar: Datasets for Question Answering by Search and Reading

We present two new large-scale datasets aimed at evaluating systems desi...
research
03/26/2017

Question Answering from Unstructured Text by Retrieval and Comprehension

Open domain Question Answering (QA) systems must interact with external ...
research
11/12/2019

EDUQA: Educational Domain Question Answering System using Conceptual Network Mapping

Most of the existing question answering models can be largely compiled i...
research
03/20/2022

Calibration of Machine Reading Systems at Scale

In typical machine learning systems, an estimate of the probability of t...
research
04/21/2020

Word Embedding-based Text Processing for Comprehensive Summarization and Distinct Information Extraction

In this paper, we propose two automated text processing frameworks speci...

Please sign up or login with your details

Forgot password? Click here to reset