Self-disclosure, social support and postpartum depressive mood in online social networks: a social penetration theory perspective

Xueqin Lei, Hong Wu, Zhaohua Deng, Qing Ye
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引用次数: 5

Abstract

PurposeThe purpose of this research is to investigate how postpartum mothers conduct self-disclosure on social media may obtain social support and therefore improve their depressive mood.Design/methodology/approachThe authors extract variables of self-disclosure by manual coding postpartum mothers' 835 posts from a parenting social media in China. The ordinary least squares model and the binary logistic regression model are used to test the proposed hypotheses.FindingsThe study suggests that both mothers' superficial level disclosure and personal level disclosure positively affect online social support received, and the effect of personal level disclosure on social support is much greater than that of superficial level disclosure. Online social support received is related to the content of the post and reduces mothers' depressive mood. The authors further find that the association between personal level disclosure and depressive mood is fully mediated by social support.Research limitations/implicationsThe data are collected from a parenting social network. Although it is the major parenting social media with the most users in China, the generalizability of this model and the findings to other social media need additional research.Practical implicationsThis study offers implications for researchers and practitioners with regard to social media uses and impacts, which also has important implications for policy and interventions for the mental health of mothers.Originality/valueThis paper makes theoretical contributions to the literature of social penetration theory and social support by (1) dividing self-disclosure into superficial level disclosure and personal level disclosure according to the intimacy of self-disclosure; (2) empirically investigating the direct effect of online self-disclosure on social support and the mediating effect of social support between online self-disclosure and mothers' depressive mood.
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网络社交网络中的自我表露、社会支持与产后抑郁情绪:社会渗透理论视角
目的本研究旨在探讨产后母亲在社交媒体上进行自我表露如何获得社会支持,从而改善抑郁情绪。设计/方法/方法作者通过对国内某育儿社交媒体上的835条产后妈妈帖子进行人工编码,提取自我表露变量。利用普通最小二乘模型和二元logistic回归模型对提出的假设进行检验。研究发现,母亲的表层披露和个人层面披露均对所获得的网络社会支持有正向影响,且个人层面披露对社会支持的影响远大于表层披露。获得的网络社会支持与帖子的内容有关,可以减少母亲的抑郁情绪。作者进一步发现,个人层面披露与抑郁情绪之间的关系完全受社会支持的调节。研究局限/启示本研究数据收集自一个育儿社交网络。虽然它是中国用户最多的主要育儿社交媒体,但这一模型的普遍性以及研究结果是否适用于其他社交媒体还需要进一步的研究。本研究为研究人员和从业人员提供了关于社交媒体使用和影响的启示,这也对母亲心理健康的政策和干预措施具有重要意义。原创性/价值本文对社会渗透理论和社会支持文献的理论贡献如下:(1)根据自我表露的亲密程度,将自我表露分为表层表露和个人层面表露;(2)实证研究网络自我表露对社会支持的直接影响,以及社会支持在网络自我表露与母亲抑郁情绪之间的中介作用。
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