Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models

BackgroundAlthough an increasing number of studies have attempted to understand how people interact with others in web-based health communities, studies focusing on understanding individuals’ patterns of information exchange and social support in web-based health communities...

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Main Authors: Liu, Xuan, Jiang, Shan, Sun, Min, Chi, Xiaotong
Format: Article
Language:English
Published: JMIR Publications 2020-09-01
Series:Journal of Medical Internet Research
Online Access:http://www.jmir.org/2020/9/e18062/
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spelling doaj-1a43e78c4d7440e2a25cddc75841255c2021-04-02T19:20:58ZengJMIR PublicationsJournal of Medical Internet Research1438-88712020-09-01229e1806210.2196/18062Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph ModelsLiu, XuanJiang, ShanSun, MinChi, Xiaotong BackgroundAlthough an increasing number of studies have attempted to understand how people interact with others in web-based health communities, studies focusing on understanding individuals’ patterns of information exchange and social support in web-based health communities are still limited. In this paper, we discuss how patients’ social interactions develop into social networks based on a network exchange framework and empirically validate the framework in web-based health care community contexts. ObjectiveThis study aims to explore various patterns of information exchange and social support in web-based health care communities and identify factors that affect such patterns. MethodsUsing social network analysis and text mining techniques, we empirically validated a network exchange framework on a 10-year data set collected from a popular web-based health community. A reply network was extracted from the data set, and exponential random graph models were used to discover patterns of information exchange and social support from the network. ResultsResults showed that reciprocated information exchange was common in web-based health communities. The homophily effect existed in general conversations but was weakened when exchanging knowledge. New members in web-based health communities tended to receive more support. Furthermore, polarized sentiment increases the chances of receiving replies, and optimistic users play an important role in providing social support to the entire community. ConclusionsThis study complements the literature on network exchange theories and contributes to a better understanding of social exchange patterns in the web-based health care context. Practically, this study can help web-based patients obtain information and social support more effectively.http://www.jmir.org/2020/9/e18062/
collection DOAJ
language English
format Article
sources DOAJ
author Liu, Xuan
Jiang, Shan
Sun, Min
Chi, Xiaotong
spellingShingle Liu, Xuan
Jiang, Shan
Sun, Min
Chi, Xiaotong
Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
Journal of Medical Internet Research
author_facet Liu, Xuan
Jiang, Shan
Sun, Min
Chi, Xiaotong
author_sort Liu, Xuan
title Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
title_short Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
title_full Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
title_fullStr Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
title_full_unstemmed Examining Patterns of Information Exchange and Social Support in a Web-Based Health Community: Exponential Random Graph Models
title_sort examining patterns of information exchange and social support in a web-based health community: exponential random graph models
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2020-09-01
description BackgroundAlthough an increasing number of studies have attempted to understand how people interact with others in web-based health communities, studies focusing on understanding individuals’ patterns of information exchange and social support in web-based health communities are still limited. In this paper, we discuss how patients’ social interactions develop into social networks based on a network exchange framework and empirically validate the framework in web-based health care community contexts. ObjectiveThis study aims to explore various patterns of information exchange and social support in web-based health care communities and identify factors that affect such patterns. MethodsUsing social network analysis and text mining techniques, we empirically validated a network exchange framework on a 10-year data set collected from a popular web-based health community. A reply network was extracted from the data set, and exponential random graph models were used to discover patterns of information exchange and social support from the network. ResultsResults showed that reciprocated information exchange was common in web-based health communities. The homophily effect existed in general conversations but was weakened when exchanging knowledge. New members in web-based health communities tended to receive more support. Furthermore, polarized sentiment increases the chances of receiving replies, and optimistic users play an important role in providing social support to the entire community. ConclusionsThis study complements the literature on network exchange theories and contributes to a better understanding of social exchange patterns in the web-based health care context. Practically, this study can help web-based patients obtain information and social support more effectively.
url http://www.jmir.org/2020/9/e18062/
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