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Social Media Unrest Prediction during the COVID-19 Pandemic: Neural Implicit Motive Pattern Recognition as Psychometric Signs of Severe Crises

机译:Covid-19大流行期间的社交媒体骚乱预测:神经隐含动力模式识别作为严重危机的心理测量迹象

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The COVID-19 pandemic has caused international social tension and unrest. Besides the crisis itself, there are growing signs of rising conflict potential of societies around the world. Indicators of global mood changes are hard to detect and direct questionnaires suffer from social desirability biases. However, so-called implicit methods can reveal humans intrinsic desires from e.g. social media texts. We present psychologically validated social unrest predictors and replicate scalable and automated predictions, setting a new state of the art on a recent German shared task dataset. We employ this model to investigate a change of language towards social unrest during the COVID-19 pandemic by comparing established psychological predictors on samples of tweets from spring 2019 with spring 2020. The results show a significant increase of the conflict-indicating psychometrics. With this work, we demonstrate the applicability of automated NLP-based approaches to quantitative psychological research.
机译:Covid-19大流行导致了国际社会紧张和动荡。除了危机本身外,世界各地社会冲突潜力上升的迹象越来越多。全球情绪变化的指标很难检测和直接问卷患有社会渴望偏见。然而,所谓的隐式方法可以揭示人类的内在欲望。社交媒体文本。我们在心理上验证的社会动荡预测器和复制可扩展和自动化预测,在最近的德国共享任务数据集上设置新的艺术状态。我们聘请该模型通过比较2019年春季与春季2020年春季2019年春季的推文样本的既定心理预测因素在Covid-19大流行期间调查语言变更。结果表明,突击表明的精神仪表性能显着增加。通过这项工作,我们证明了基于NLP的自动化方法对量化心理研究的适用性。

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