Social Media as a Sensor of Air Quality and Public Response in China

BackgroundRecent studies have demonstrated the utility of social media data sources for a wide range of public health goals, including disease surveillance, mental health trends, and health perceptions and sentiment. Most such research has focused on English-language social m...

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Main Authors: Wang, Shiliang, Paul, Michael J, Dredze, Mark
Format: Article
Language:English
Published: JMIR Publications 2015-03-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2015/3/e22/
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spelling doaj-94dacdc4675c465dbf519eae43362e122021-04-02T19:00:32ZengJMIR PublicationsJournal of Medical Internet Research1438-88712015-03-01173e2210.2196/jmir.3875Social Media as a Sensor of Air Quality and Public Response in ChinaWang, ShiliangPaul, Michael JDredze, Mark BackgroundRecent studies have demonstrated the utility of social media data sources for a wide range of public health goals, including disease surveillance, mental health trends, and health perceptions and sentiment. Most such research has focused on English-language social media for the task of disease surveillance. ObjectiveWe investigated the value of Chinese social media for monitoring air quality trends and related public perceptions and response. The goal was to determine if this data is suitable for learning actionable information about pollution levels and public response. MethodsWe mined a collection of 93 million messages from Sina Weibo, China’s largest microblogging service. We experimented with different filters to identify messages relevant to air quality, based on keyword matching and topic modeling. We evaluated the reliability of the data filters by comparing message volume per city to air particle pollution rates obtained from the Chinese government for 74 cities. Additionally, we performed a qualitative study of the content of pollution-related messages by coding a sample of 170 messages for relevance to air quality, and whether the message included details such as a reactive behavior or a health concern. ResultsThe volume of pollution-related messages is highly correlated with particle pollution levels, with Pearson correlation values up to .718 (n=74, P<.001). Our qualitative results found that 67.1% (114/170) of messages were relevant to air quality and of those, 78.9% (90/114) were a firsthand report. Of firsthand reports, 28% (32/90) indicated a reactive behavior and 19% (17/90) expressed a health concern. Additionally, 3 messages of 170 requested that action be taken to improve quality. ConclusionsWe have found quantitatively that message volume in Sina Weibo is indicative of true particle pollution levels, and we have found qualitatively that messages contain rich details including perceptions, behaviors, and self-reported health effects. Social media data can augment existing air pollution surveillance data, especially perception and health-related data that traditionally requires expensive surveys or interviews.http://www.jmir.org/2015/3/e22/
collection DOAJ
language English
format Article
sources DOAJ
author Wang, Shiliang
Paul, Michael J
Dredze, Mark
spellingShingle Wang, Shiliang
Paul, Michael J
Dredze, Mark
Social Media as a Sensor of Air Quality and Public Response in China
Journal of Medical Internet Research
author_facet Wang, Shiliang
Paul, Michael J
Dredze, Mark
author_sort Wang, Shiliang
title Social Media as a Sensor of Air Quality and Public Response in China
title_short Social Media as a Sensor of Air Quality and Public Response in China
title_full Social Media as a Sensor of Air Quality and Public Response in China
title_fullStr Social Media as a Sensor of Air Quality and Public Response in China
title_full_unstemmed Social Media as a Sensor of Air Quality and Public Response in China
title_sort social media as a sensor of air quality and public response in china
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2015-03-01
description BackgroundRecent studies have demonstrated the utility of social media data sources for a wide range of public health goals, including disease surveillance, mental health trends, and health perceptions and sentiment. Most such research has focused on English-language social media for the task of disease surveillance. ObjectiveWe investigated the value of Chinese social media for monitoring air quality trends and related public perceptions and response. The goal was to determine if this data is suitable for learning actionable information about pollution levels and public response. MethodsWe mined a collection of 93 million messages from Sina Weibo, China’s largest microblogging service. We experimented with different filters to identify messages relevant to air quality, based on keyword matching and topic modeling. We evaluated the reliability of the data filters by comparing message volume per city to air particle pollution rates obtained from the Chinese government for 74 cities. Additionally, we performed a qualitative study of the content of pollution-related messages by coding a sample of 170 messages for relevance to air quality, and whether the message included details such as a reactive behavior or a health concern. ResultsThe volume of pollution-related messages is highly correlated with particle pollution levels, with Pearson correlation values up to .718 (n=74, P<.001). Our qualitative results found that 67.1% (114/170) of messages were relevant to air quality and of those, 78.9% (90/114) were a firsthand report. Of firsthand reports, 28% (32/90) indicated a reactive behavior and 19% (17/90) expressed a health concern. Additionally, 3 messages of 170 requested that action be taken to improve quality. ConclusionsWe have found quantitatively that message volume in Sina Weibo is indicative of true particle pollution levels, and we have found qualitatively that messages contain rich details including perceptions, behaviors, and self-reported health effects. Social media data can augment existing air pollution surveillance data, especially perception and health-related data that traditionally requires expensive surveys or interviews.
url http://www.jmir.org/2015/3/e22/
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