RikiNet: Reading Wikipedia Pages for Natural Question Answering

04/30/2020
by   Dayiheng Liu, et al.
0

Reading long documents to answer open-domain questions remains challenging in natural language understanding. In this paper, we introduce a new model, called RikiNet, which reads Wikipedia pages for natural question answering. RikiNet contains a dynamic paragraph dual-attention reader and a multi-level cascaded answer predictor. The reader dynamically represents the document and question by utilizing a set of complementary attention mechanisms. The representations are then fed into the predictor to obtain the span of the short answer, the paragraph of the long answer, and the answer type in a cascaded manner. On the Natural Questions (NQ) dataset, a single RikiNet achieves 74.3 F1 and 57.9 F1 on long-answer and short-answer tasks. To our best knowledge, it is the first single model that outperforms the single human performance. Furthermore, an ensemble RikiNet obtains 76.1 F1 and 61.3 F1 on long-answer and short-answer tasks, achieving the best performance on the official NQ leaderboard

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/30/2019

Ensembling Strategies for Answering Natural Questions

Many of the top question answering systems today utilize ensembling to i...
research
01/24/2019

A BERT Baseline for the Natural Questions

This technical note describes a new baseline for the Natural Questions. ...
research
10/29/2018

ReviewQA: a relational aspect-based opinion reading dataset

Deep reading models for question-answering have demonstrated promising p...
research
06/20/2018

Jack the Reader - A Machine Reading Framework

Many Machine Reading and Natural Language Understanding tasks require re...
research
03/31/2017

Reading Wikipedia to Answer Open-Domain Questions

This paper proposes to tackle open- domain question answering using Wiki...
research
05/05/2020

Probabilistic Assumptions Matter: Improved Models for Distantly-Supervised Document-Level Question Answering

We address the problem of extractive question answering using document-l...
research
09/02/2020

SRQA: Synthetic Reader for Factoid Question Answering

The question answering system can answer questions from various fields a...

Please sign up or login with your details

Forgot password? Click here to reset