Logo image
Analyzing and Predicting User Participations in Online Health Communities: A Social Support Perspective
Journal article   Open access   Peer reviewed

Analyzing and Predicting User Participations in Online Health Communities: A Social Support Perspective

Xi Wang, Kang Zhao and Nick Street
Journal of medical internet research, Vol.19(4), p.e130
04/24/2017
DOI: 10.2196/jmir.6834
PMCID: PMC5422656
PMID: 28438725
pdf
Analyzing and Predicting User Participations in Online Health Com789.60 kBDownloadView
Published (Version of record)CC BY V4.0 Open Access
url
https://doi.org/10.2196/jmir.6834View
Published (Version of record)J Med Internet Res 2017;19(4):e130.

Abstract

BACKGROUND: Online health communities (OHCs) have become a major source of social support for people with health problems. Members of OHCs interact online with similar peers to seek, receive, and provide different types of social support, such as informational support, emotional support, and companionship. As active participations in an OHC are beneficial to both the OHC and its users, it is important to understand factors related to users' participations and predict user churn for user retention efforts.

OBJECTIVE: This study aimed to analyze OHC users' Web-based interactions, reveal which types of social support activities are related to users' participation, and predict whether and when a user will churn from the OHC.

METHODS: We collected a large-scale dataset from a popular OHC for cancer survivors. We used text mining techniques to decide what kinds of social support each post contained. We illustrated how we built text classifiers for 5 different social support categories: seeking informational support (SIS), providing informational support (PIS), seeking emotional support (SES), providing emotional support (PES), and companionship (COM). We conducted survival analysis to identify types of social support related to users' continued participation. Using supervised machine learning methods, we developed a predictive model for user churn.

RESULTS: Users' behaviors to PIS, SES, and COM had hazard ratios significantly lower than 1 (0.948, 0.972, and 0.919, respectively) and were indicative of continued participations in the OHC. The churn prediction model based on social support activities offers accurate predictions on whether and when a user will leave the OHC.

CONCLUSIONS: Detecting different types of social support activities via text mining contributes to better understanding and prediction of users' participations in an OHC. The outcome of this study can help the management and design of a sustainable OHC via more proactive and effective user retention strategies.

Data Mining OAfund Blogging Health Services Humans Internet Neoplasms Patient Participation Peer Group Self-Help Groups Social Media Social Support Supervised Machine Learning Survival Analysis Survivors

Details

Metrics

269 File views/ downloads
136 Record Views
Logo image