Identifying Chinese social media users' need for affect from their online behaviors
- PMID: 36703844
- PMCID: PMC9871915
- DOI: 10.3389/fpubh.2022.1045279
Identifying Chinese social media users' need for affect from their online behaviors
Abstract
The need for affect (NFA), which refers to the motivation to approach or avoid emotion-inducing situations, is a valuable indicator of mental health monitoring and intervention, as well as many other applications. Traditionally, NFA has been measured using self-reports, which is not applicable in today's online scenarios due to its shortcomings in fast, large-scale assessments. This study proposed an automatic and non-invasive method for recognizing NFA based on social media behavioral data. The NFA questionnaire scores of 934 participants and their social media data were acquired. Then we run machine learning algorithms to train predictive models, which can be used to automatically identify NFA degrees of online users. The results showed that Extreme Gradient Boosting (XGB) performed best among several algorithms. The Pearson correlation coefficients between predicted scores and NFA questionnaire scores achieved 0.25 (NFA avoidance), 0.31 (NFA approach) and 0.34 (NFA total), and the split-half reliabilities were 0.66-0.70. Our research demonstrated that adolescents' NFA can be identified based on their social media behaviors, and opened a novel way of non-intrusively perceiving users' NFA which can be used for mental health monitoring and other situations that require large-scale NFA measurements.
Keywords: Extreme Gradient Boosting; machine learning; mental health; need for affect; online behavior; social media.
Copyright © 2023 Deng, Zhao and Wang.
Conflict of interest statement
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest. The reviewer BL declared a shared affiliation with the authors to the handling editor at the time of review.
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References
-
- Cramer RJ, Mandracchia J, Gemberling TM, Holley SR, Wright S, Moody K, et al. . Can need for affect and sexuality differentiate suicide risk in three community samples? J Soc Clin Psychol. (2017) 36:704–22. 10.1521/jscp.2017.36.8.704 - DOI
-
- Bryson CN, Cramer RJ, Schmidt AT. Need for affect, interpersonal psychological theory of suicide, and suicide proneness. Arch Suicide Res. (2018) 2018:1–26. - PubMed
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