Abstract

The mental health of college students is a growing concern, and gauging the mental health needs of college students is difficult to assess in real-time and in scale. To address this gap, researchers and practitioners have encouraged the use of passive technologies. Social media is one such "passive sensor" that has shown potential as a viable "passive sensor" of mental health. However, the construct validity and in-practice reliability of computational assessments of mental health constructs with social media data remain largely unexplored. Towards this goal, we study how assessing the mental health of college students using social media data correspond with ground-truth data of on-campus mental health consultations. For a large U.S. public university, we obtained ground-truth data of on-campus mental health consultations between 2011–2016, and collected 66,000 posts from the university’s Reddit community. We adopted machine learning and natural language methodologies to measure symptomatic mental health expressions of depression, anxiety, stress, suicidal ideation, and psychosis on the social media data. Seasonal auto-regressive integrated moving average (SARIMA) models of forecasting on-campus mental health consultations showed that incorporating social media data led to predictions with r = 0.86 and SMAPE = 13.30, outperforming models without social media data by 41%. Our language analyses revealed that social media discussions during high mental health consultations months consisted of discussions on academics and career, whereas months of low mental health consultations saliently show expressions of positive affect, collective identity, and socialization. This study reveals that social media data can improve our understanding of college students’ mental health, particularly their mental health treatment needs.

Highlights

  • Mental health on college campuses is a matter of growing concern as an increasing number of college students show rising levels of anxiety, depression, and suicidal ideation

  • Greatest mental health expressions occur in April, July, and November, which coincide with the periods before examinations for the university in consideration, as well as that for most U.S colleges that follow three-semester cycle in an academic term

  • This study showed that social media interactions of college students can help predict ground-truth data of on-campus mental health consultations

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Summary

Introduction

Mental health on college campuses is a matter of growing concern as an increasing number of college students show rising levels of anxiety, depression, and suicidal ideation. A research study conducted by Penn State’s Center for Collegiate Mental Health, for instance, reported a 30–40% increase in the on-campus counseling consultations between 2009–2015, despite an only 5% increase in ­enrollment[4] These services often lack in resources, staff, and preparedness, leading to long waiting lists and selective/infrequent consultations of ­many[5]. With an increasing gap in the supply of mental health resources and their growing demand, college campuses need to find alternative means to gauge and forecast the demand of counselling services in order to cater to everyone who needs them To overcome such limitations, researchers and practitioners have started exploring passive sources of data, which provide dense and longitudinal behavior of individuals at ­scale[8]. Bagroy et al measured campus-specific Mental Wellbeing Index (MWI), and found seasonal trends of mental health expressions which were higher during academic terms as compared to ­holidays[24], and Saha et al measured the efficacy of counseling recommendations following student deaths on college c­ ampuses[28]

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