4.7 Article

Sensing Psychological Well-being Using Social Media Language: Prediction Model Development Study

Journal

JOURNAL OF MEDICAL INTERNET RESEARCH
Volume 25, Issue -, Pages -

Publisher

JMIR PUBLICATIONS, INC
DOI: 10.2196/41823

Keywords

mental health; psychological well-being; social media; machine learning; domain knowledge; mental well being; mental wellbeing; linguistic; predict; model; ground truth; lexicon

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The study aims to investigate the relationship between social media language expression and psychological well-being. By collecting users' posts on social media and extracting linguistic features, a multiobjective prediction model was built to verify the effectiveness of the model in predicting psychological well-being. The results showed that the model had good convergent validity but less than satisfactory discriminant validity in terms of its structural validity.
Background: Positive mental health is arguably increasingly important and can be revealed, to some extent, in terms of psychological well-being (PWB). However, PWB is difficult to assess in real time on a large scale. The popularity and proliferation of social media make it possible to sense and monitor online users' PWB in a nonintrusive way, and the objective of this study is to test the effectiveness of using social media language expression as a predictor of PWB. Objective: This study aims to investigate the predictive power of social media corresponding to ground truth well-being data in a psychological way. Methods: We recruited 1427 participants. Their well-being was evaluated using 6 dimensions of PWB. Their posts on social media were collected, and 6 psychological lexicons were used to extract linguistic features. A multiobjective prediction model was then built with the extracted linguistic features as input and PWB as the output. Further, the validity of the prediction model was confirmed by evaluating the model's discriminant validity, convergent validity, and criterion validity. The reliability of the model was also confirmed by evaluating the split-half reliability. Results: The correlation coefficients between the predicted PWB scores of social media users and the actual scores obtained using the linguistic prediction model of this study were between 0.49 and 0.54 (P<.001), which means that the model had good criterion validity. In terms of the model's structural validity, it exhibited excellent convergent validity but less than satisfactory discriminant validity. The results also suggested that our model had good split-half reliability levels for every dimension (ranging from 0.65 to 0.85; P<.001). Conclusions: By confirming the availability and stability of the linguistic prediction model, this study verified the predictability of social media corresponding to ground truth well-being data from the perspective of PWB. Our study has positive implications for the use of social media to predict mental health in nonprofessional settings such as self-testing or a large-scale user study.

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