Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season

This study aims to identify sentiments that consumers have about health insurance by analyzing what they discuss on Twitter. The objective was to use sentiment analysis to identify attitudes consumers express towards health insurance and health care providers. We used an Application Programming Inte...

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Bibliographic Details
Main Authors: Eline M. van den Broek-Altenburg, Adam J. Atherly
Format: Article
Language:English
Published: MDPI AG 2019-05-01
Series:Applied Sciences
Subjects:
Online Access:https://www.mdpi.com/2076-3417/9/10/2035
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spelling doaj-75e70829926e48009dc3f59fe1238f442020-11-24T20:46:44ZengMDPI AGApplied Sciences2076-34172019-05-01910203510.3390/app9102035app9102035Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment SeasonEline M. van den Broek-Altenburg0Adam J. Atherly1Center for Health Services Research, The Larner College of Medicine, University of Vermont, Burlington, VT 05405, USACenter for Health Services Research, The Larner College of Medicine, University of Vermont, Burlington, VT 05405, USAThis study aims to identify sentiments that consumers have about health insurance by analyzing what they discuss on Twitter. The objective was to use sentiment analysis to identify attitudes consumers express towards health insurance and health care providers. We used an Application Programming Interface to gather tweets from Twitter with the words “health insurance” or “health plan” during health insurance enrollment season in the United States in 2016‒2017. Word association was used to find words associated with “premium,” “access,” “network,” and “switch.” Sentiment analysis established which specific emotions were associated with insurance and medical providers, using the NRC Emotion Lexicon, identifying emotions. We identified that provider networks, prescription drug benefits, political preferences, and norms of other consumers matter. Consumers trust medical providers but they fear unexpected health events. The results suggest that there is a need for different algorithms to help consumers find the plans they want and need. Consumers buying health insurance in the Affordable Care Act marketplaces in the United States choose lower-cost plans with limited benefits, but at the same time express fear about unexpected health events and unanticipated costs. If we better understand the origin of the sentiments that drive consumers, we may be able to help them better navigate insurance plan options and insurers can better respond to their needs.https://www.mdpi.com/2076-3417/9/10/2035social mediaTwittertext miningsentiment analysisword associationhealth insuranceprovider networks
collection DOAJ
language English
format Article
sources DOAJ
author Eline M. van den Broek-Altenburg
Adam J. Atherly
spellingShingle Eline M. van den Broek-Altenburg
Adam J. Atherly
Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
Applied Sciences
social media
Twitter
text mining
sentiment analysis
word association
health insurance
provider networks
author_facet Eline M. van den Broek-Altenburg
Adam J. Atherly
author_sort Eline M. van den Broek-Altenburg
title Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
title_short Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
title_full Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
title_fullStr Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
title_full_unstemmed Using Social Media to Identify Consumers’ Sentiments towards Attributes of Health Insurance during Enrollment Season
title_sort using social media to identify consumers’ sentiments towards attributes of health insurance during enrollment season
publisher MDPI AG
series Applied Sciences
issn 2076-3417
publishDate 2019-05-01
description This study aims to identify sentiments that consumers have about health insurance by analyzing what they discuss on Twitter. The objective was to use sentiment analysis to identify attitudes consumers express towards health insurance and health care providers. We used an Application Programming Interface to gather tweets from Twitter with the words “health insurance” or “health plan” during health insurance enrollment season in the United States in 2016‒2017. Word association was used to find words associated with “premium,” “access,” “network,” and “switch.” Sentiment analysis established which specific emotions were associated with insurance and medical providers, using the NRC Emotion Lexicon, identifying emotions. We identified that provider networks, prescription drug benefits, political preferences, and norms of other consumers matter. Consumers trust medical providers but they fear unexpected health events. The results suggest that there is a need for different algorithms to help consumers find the plans they want and need. Consumers buying health insurance in the Affordable Care Act marketplaces in the United States choose lower-cost plans with limited benefits, but at the same time express fear about unexpected health events and unanticipated costs. If we better understand the origin of the sentiments that drive consumers, we may be able to help them better navigate insurance plan options and insurers can better respond to their needs.
topic social media
Twitter
text mining
sentiment analysis
word association
health insurance
provider networks
url https://www.mdpi.com/2076-3417/9/10/2035
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