Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster

Natural disasters are events that humans cannot control, and Japan has suffered from many such disasters over its long history. Many of these have caused severe damage to human lives and property. These days, numerous Japanese people have gained considerable experience preparing for disasters and ar...

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Main Authors: Kemachart Kemavuthanon, Osamu Uchida
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Information
Subjects:
Online Access:https://www.mdpi.com/2078-2489/11/9/456
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spelling doaj-d75e22b355df4c3bbcdae580ece525e52020-11-25T02:51:33ZengMDPI AGInformation2078-24892020-09-011145645610.3390/info11090456Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of DisasterKemachart Kemavuthanon0Osamu Uchida1Graduate School of Science and Technology, Tokai University, Kanagawa 259-1292, JapanSchool of Information Science and Technology, Tokai University, Kanagawa 259-1292, JapanNatural disasters are events that humans cannot control, and Japan has suffered from many such disasters over its long history. Many of these have caused severe damage to human lives and property. These days, numerous Japanese people have gained considerable experience preparing for disasters and are now striving to predict the effects of disasters using social network services (SNSs) to exchange information in real time. Currently, Twitter is the most popular and powerful SNS tool used for disaster response in Japan because it allows users to exchange and disseminate information quickly. However, since almost all of the Japanese-related content is also written in the Japanese language, which restricts most of its benefits to Japanese people, we feel that it is necessary to create a disaster response system that would help people who do not understand Japanese. Accordingly, this paper presents the framework of a question-answering (QA) system that was developed using a Twitter dataset containing more than nine million tweets compiled during the Osaka North Earthquake that occurred on 18 June 2018. We also studied the structure of the questions posed and developed methods for classifying them into particular categories in order to find answers from the dataset using an ontology, word similarity, keyword frequency, and natural language processing. The experimental results presented herein confirm the accuracy of the answer results generated from our proposed system.https://www.mdpi.com/2078-2489/11/9/456disaster informationquestion answering systemsquestion classificationTwitter analysisnatural language processingneural disaster
collection DOAJ
language English
format Article
sources DOAJ
author Kemachart Kemavuthanon
Osamu Uchida
spellingShingle Kemachart Kemavuthanon
Osamu Uchida
Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
Information
disaster information
question answering systems
question classification
Twitter analysis
natural language processing
neural disaster
author_facet Kemachart Kemavuthanon
Osamu Uchida
author_sort Kemachart Kemavuthanon
title Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
title_short Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
title_full Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
title_fullStr Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
title_full_unstemmed Integrated Question-Answering System for Natural Disaster Domains Based on Social Media Messages Posted at the Time of Disaster
title_sort integrated question-answering system for natural disaster domains based on social media messages posted at the time of disaster
publisher MDPI AG
series Information
issn 2078-2489
publishDate 2020-09-01
description Natural disasters are events that humans cannot control, and Japan has suffered from many such disasters over its long history. Many of these have caused severe damage to human lives and property. These days, numerous Japanese people have gained considerable experience preparing for disasters and are now striving to predict the effects of disasters using social network services (SNSs) to exchange information in real time. Currently, Twitter is the most popular and powerful SNS tool used for disaster response in Japan because it allows users to exchange and disseminate information quickly. However, since almost all of the Japanese-related content is also written in the Japanese language, which restricts most of its benefits to Japanese people, we feel that it is necessary to create a disaster response system that would help people who do not understand Japanese. Accordingly, this paper presents the framework of a question-answering (QA) system that was developed using a Twitter dataset containing more than nine million tweets compiled during the Osaka North Earthquake that occurred on 18 June 2018. We also studied the structure of the questions posed and developed methods for classifying them into particular categories in order to find answers from the dataset using an ontology, word similarity, keyword frequency, and natural language processing. The experimental results presented herein confirm the accuracy of the answer results generated from our proposed system.
topic disaster information
question answering systems
question classification
Twitter analysis
natural language processing
neural disaster
url https://www.mdpi.com/2078-2489/11/9/456
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