A linguistic signaling model of social support exchange in online health communities

作者:

Highlights:

• We investigate the impact of linguistic signals on online social support exchange.

• Affective linguistic signals are effective in invoking social support exchange.

• Readability, post length, and spelling promote informational support provision.

• Readability and spelling positively associate with emotional support receipt.

摘要

Health care consumers and patients are increasingly using online health communities (OHCs) to exchange social support and enhance their well-being. The success of OHCs in promoting health, however, depends not just on posting activity by participants, but, crucially, on whether or not responses are subsequently received. While previous studies have considered various mechanisms by which the likelihood of social support provisioning can be increased (e.g., the establishment of social capital), the impacts of linguistic signals have yet to be considered. Therefore, we consider whether or not linguistic signals in posts—including sentiment valence, linguistic style matching, readability, post length, and spelling—impact the amount of support received. Adopting an overarching theoretical framework of signaling theory, this study proposes a model that explains the signaling roles of linguistic features within OHC posts in promoting social support provision from OHC participants. The research model is empirically tested on a large dataset collected from an OHC platform covering multiple health conditions. Results show that affective linguistic signals, including negative sentiment and linguistic style matching, are effective in invoking both informational and emotional support from the community. We also find that informative linguistic signals including readability, post length, and spelling are positively associated with informational support receipt, while readability and spelling are also positively associated with emotional support receipt. Overall, this research not only enriches our current understandings of the linguistic signaling in OHCs, but also provides practical insights into improving social support exchange in OHCs.

论文关键词:Online health communities,Social support exchange,Signaling theory,Sentiment,Negativity bias,Linguistic style matching

论文评审过程:Received 22 July 2019, Revised 31 October 2019, Accepted 17 December 2019, Available online 19 December 2019, Version of Record 31 January 2020.

论文官网地址:https://doi.org/10.1016/j.dss.2019.113233