Unintended Emotional Effects of Online Health Communities: A Text Mining-Supported Empirical Study

MIS Q. Pub Date : 2023-03-01 DOI:10.2139/ssrn.3394398
Jiaqi Zhou, Qingpeng Zhang, Sijia Zhou, Xin Li, X. Zhang
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Abstract

Online health communities (OHCs) play an important role in enabling patients to exchange information and obtain social support from each other. However, do OHC interactions always benefit patients? In this research, we investigate different mechanisms by which OHC content may affect patients’ emotions. Specifically, we notice users can read not only emotional support intended to help them but also emotional support targeting other persons or posts that are not intended to generate any emotional support (auxiliary content). Drawing from emotional contagion theories, we argue that even though emotional support may benefit targeted support seekers, it could have a negative impact on the emotions of other support seekers. Our empirical study on an OHC for depression patients supports these arguments. Our findings are new to the literature and have critical practical implications since they suggest that we should carefully manage OHC-based interventions for depression patients to avoid unintended consequences. We design a novel deep learning model to differentiate emotional support from auxiliary content. Such differentiation is critical for identifying the negative effect of emotional support on unintended recipients. We also discuss options to alter the intervention volume, length, and frequency to tackle the challenge of the negative effect.
在线健康社区的意外情绪影响:文本挖掘支持的实证研究
在线卫生社区(OHCs)在使患者能够相互交换信息和获得社会支持方面发挥着重要作用。然而,OHC相互作用是否总是对患者有益?在本研究中,我们探讨了OHC含量影响患者情绪的不同机制。具体来说,我们注意到用户不仅可以阅读旨在帮助他们的情感支持,还可以阅读针对其他人的情感支持或不打算产生任何情感支持的帖子(辅助内容)。根据情绪传染理论,我们认为尽管情绪支持可能有利于目标寻求支持者,但它可能对其他寻求支持者的情绪产生负面影响。我们对抑郁症患者OHC的实证研究支持了这些观点。我们的发现对文献来说是新的,具有重要的实际意义,因为它们建议我们应该仔细管理基于ohc的抑郁症患者干预措施,以避免意想不到的后果。我们设计了一个新的深度学习模型来区分情感支持和辅助内容。这种区分对于识别情感支持对非预期接受者的负面影响至关重要。我们还讨论了改变干预量、长度和频率的选择,以应对负面影响的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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