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Characterizing negative sentiments in at-risk populations via crowd computing: a computational social science approach

机译:通过人群计算表征高危人群的负面情绪:一种计算社会科学方法

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摘要

Drawing on psychological theory, we created a new approach to classify negative sentiment tweets and presented a subset of unclassified tweets to humans for categorization. With these results, a tweet classification distribution was built to visualize how the tweets can fit in different categories. The approach developed through visualization and classification of data could be an important base to measure the efficiency of a machine classifier with psychological diagnostic criteria as the base (Thelwall et al. in J Assoc Inf Sci Technol 62(4):406-418, 2011). Nonetheless, this proposed system is used to identify red flags in at-risk population for further intervention, due to the need to be validated through therapy with an expert.
机译:利用心理学理论,我们创建了一种对负面情绪推文进行分类的新方法,并向人类展示了未分类推文的子集进行分类。根据这些结果,构建了一条推文分类分布,以可视化这些推文如何适合不同类别。通过数据的可视化和分类开发的方法可能是衡量以心理诊断标准为基础的机器分类器效率的重要基础(Thelwall等人在J Assoc Inf Sci Technol 62(4):406-418,2011 )。尽管如此,由于需要通过专家的疗法进行验证,因此该提议的系统用于识别高危人群中的危险信号,以进行进一步干预。

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