Comparing Naturalistic Mental Health Expressions on Student Loan Debts Using Reddit and Twitter.

Gaurav R Sinha, Christopher R Larrison, Ian Brooks, Ugur Kursuncu
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Abstract

Purpose: The primary objective of this study was to identify patterns in users' naturalistic expressions on student loans on two social media platforms. The secondary objective was to examine how these patterns, sentiments, and emotions associated with student loans differ in user posts indicating mental illness.

Material and method: Data for this study were collected from Reddit and Twitter (2009-2020, n = 85,664) using certain key terms of student loans along with first-person pronouns as a triangulating measure of posts by individuals. Unsupervised and supervised machine learning models were used to analyze the text data.

Results: Results suggested 50 topics in reddit finance and 40 each in reddit mental health communities and Twitter. Statistically significant associations were found between mental illness statuses and sentiments and emotions. Posts expressing mental illness showed more negative sentiments and were more likely to express sadness and fear.

Discussion and conclusion: Patterns in social media discussions indicate both academic and non-academic consequences of having student debt, including users' desire to know more about their debts. Interventions should address the skill and information gaps between what is desired by the borrowers and what is offered to them in understanding and managing their debts. Cognitive burden created by student debts manifest itself on social media and can be used as an important marker to develop a nuanced understanding of people's expressions on a variety of socioeconomic issues. Higher volumes of negative sentiments and emotions of sadness, fear, and anger warrant immediate attention of policymakers and practitioners to reduce the cognitive burden of student debts.

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比较使用Reddit和Twitter的学生贷款债务的自然心理健康表达。
目的:本研究的主要目的是识别用户在两个社交媒体平台上对学生贷款的自然表达模式。第二个目标是检查与学生贷款相关的这些模式、情绪和情绪在表明精神疾病的用户帖子中是如何不同的。材料和方法:本研究的数据收集自Reddit和Twitter(2009-2020年,n = 85,664),使用学生贷款的某些关键术语和第一人称代词作为个人帖子的三角测量方法。使用无监督和有监督机器学习模型来分析文本数据。结果:结果显示reddit财经有50个主题,reddit心理健康社区和Twitter各有40个主题。在统计上发现了精神疾病状态和情绪之间的显著关联。表达精神疾病的帖子表现出更多的负面情绪,更有可能表达悲伤和恐惧。讨论和结论:社交媒体讨论的模式表明了学生债务的学术和非学术后果,包括用户希望更多地了解他们的债务。干预措施应解决借款人在了解和管理其债务方面所要求的与所能提供的之间的技能和信息差距。学生债务造成的认知负担在社交媒体上表现出来,可以作为一个重要的标志,用来细致地理解人们对各种社会经济问题的表达。更多的负面情绪和悲伤、恐惧和愤怒情绪需要决策者和从业者立即关注,以减轻学生债务的认知负担。
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