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Can the adoption of health information on social media be predicted by information characteristics?

机译:可以通过信息特征预测关于社交媒体的健康信息吗?

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Purpose This paper aims to explore the relationship between the characteristics of social media health information and its adoption. The purpose is to identify information characteristics that can be used to estimate the level of health information adoption in advance. Design/methodology/approach According to the Information Adoption Model (IAM), the study extracted ten information characteristics from the aspects of information quality and information source credibility. The sample data was collected from the top ten influential health accounts based on the Impact List of Sina Weibo to test the effectiveness of these characteristics in distinguishing information at different levels of adoption. The forecasting of information adoption level is regarded as a binary classification question in the study and support vector machine (SVM) is used to do the research. Findings The results indicate that ten information characteristics chosen in this study are related to information adoption. Based on these information characteristics, it is feasible to estimate the level of health information adoption, and the estimation accuracy is relatively high. Originality/value A lot of work has been done in previous researches to reveal the factors that influence information adoption. The theoretical contribution of this work is to further discuss how to use the influencing factors to do some predictive work for information adoption. In practice, it will help health information publishers to disseminate high-quality health information more effectively as well as promote the adoption of health information.
机译:目的本文旨在探讨社交媒体健康信息特点与其采用之间的关系。目的是识别可用于预先估计健康信息水平的信息特征。根据信息采用模型(IAM)的设计/方法/方法,从信息质量和信息源信誉方面提取了十种信息特征。根据新浪微博的影响列表,从十大有影响力的健康账户收集样本数据,以测试这些特征在不同采用水平的信息中的有效性。信息采用级别的预测被视为研究中的二进制分类问题,支持向量机(SVM)用于进行研究。结果表明,该研究中选择的十种信息特征与信息采用有关。基于这些信息特征,估计健康信息采用水平是可行的,估计准确度相对较高。在以前的研究中已经完成了大量工作,以揭示影响信息采用的因素。这项工作的理论贡献是进一步讨论如何利用影响因素,以便为信息采用做一些预测工作。在实践中,它将有助于健康信息出版商更有效地传播高质量的健康信息,并促进卫生信息的采用。

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