Date of Award
2021
Document Type
Thesis
Degree Name
Master of Science (MS)
Department
Complex Systems and Data Science
First Advisor
Christopher Danforth
Second Advisor
Peter S. Dodds
Abstract
Mental health challenges are thought to afflict around 10% of the global population each year, with many going untreated due to stigma and limited access to services. Here, we explore trends in words and phrases related to mental health through a collection of 1- , 2-, and 3-grams parsed from a data stream of roughly 10% of all English tweets since 2012. We examine temporal dynamics of mental health language, finding that the popularity of the phrase ‘mental health’ increased by nearly two orders of magnitude between 2012 and 2018. We observe that mentions of ‘mental health’ spike annually and reliably due to mental health awareness campaigns, as well as unpredictably in response to mass shootings, celebrities dying by suicide, and popular fictional stories portraying suicide. We find that the level of positivity of messages containing ‘mental health’, while stable through the growth period, has declined recently. Finally, we use the ratio of original tweets to retweets to quantify the fraction of appearances of mental health language due to social amplification. Since 2015, mentions of mental health have become increasingly due to retweets, suggesting that stigma associated with discussion of mental health on Twitter has diminished with time.
Language
en
Number of Pages
47 p.
Recommended Citation
Stupinski, Anne Marie, "Quantifying language changes surrounding mental health on Twitter" (2021). Graduate College Dissertations and Theses. 1467.
https://scholarworks.uvm.edu/graddis/1467
Included in
Computer Sciences Commons, Library and Information Science Commons, Psychiatric and Mental Health Commons