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使用社交媒体语言感知心理健康:预测模型开发研究。

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

机构信息

Chinese Academy Sciences Key Laboratory of Behavioral Science, Institute of Psychology, Chinese Academy of Sciences, Beijing, China.

Department of Psychology, University of Chinese Academy of Sciences, Beijing, China.

出版信息

J Med Internet Res. 2023 Jan 31;25:e41823. doi: 10.2196/41823.

Abstract

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.

摘要

背景

积极的心理健康可以说是越来越重要,在某种程度上可以通过心理幸福感(PWB)来体现。然而,PWB 很难大规模实时评估。社交媒体的普及和扩散使得以非侵入方式感知和监测在线用户的 PWB 成为可能,本研究的目的是检验使用社交媒体语言表达作为 PWB 预测指标的有效性。

目的

本研究旨在从心理学角度探讨社交媒体与真实幸福感数据相对应的预测能力。

方法

我们招募了 1427 名参与者。使用 PWB 的 6 个维度评估他们的幸福感。收集他们在社交媒体上的帖子,并使用 6 个心理词汇表提取语言特征。然后,使用提取的语言特征作为输入,PWB 作为输出,构建多目标预测模型。进一步通过评估模型的判别有效性、收敛有效性和标准有效性来验证预测模型的有效性。通过评估模型的半分可靠性来验证模型的可靠性。

结果

社交媒体用户的预测 PWB 得分与使用本研究的语言预测模型获得的实际得分之间的相关系数在 0.49 到 0.54 之间(P<.001),这意味着该模型具有良好的标准有效性。就模型的结构有效性而言,它表现出极好的收敛有效性,但判别有效性较差。结果还表明,我们的模型在每个维度上都具有良好的半分可靠性水平(范围从 0.65 到 0.85;P<.001)。

结论

通过确认语言预测模型的可用性和稳定性,本研究从 PWB 的角度验证了与真实幸福感数据相对应的社交媒体的可预测性。我们的研究对在非专业环境(例如自我测试或大规模用户研究)中使用社交媒体预测心理健康具有积极意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/891a/9929724/69f1c70db530/jmir_v25i1e41823_fig1.jpg

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