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An Unobtrusive Behavioral Model of 'Gross National Happiness'

机译:“国民幸福总值”的客观行为模型

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I analyze the use of emotion words for approximately 100 million Facebook users since September of 2007. "Gross national happiness" is operationalized as a standardized difference between the use of positive and negative words, aggregated across days, and present a graph of this metric. I begin to validate this metric by showing that positive and negative word use in status updates covaries with self-reported satisfaction with life (convergent validity), and also note that the graph shows peaks and valleys on days that are culturally and emotionally significant (face validity). I discuss the development and computation of this metric, argue that this metric and graph serves as a representation of the overall emotional health of the nation, and discuss the importance of tracking such metrics.
机译:自2007年9月以来,我分析了大约1亿Facebook用户的情感词使用情况。“全民幸福”已作为使用肯定和否定词之间的标准化差异(跨天汇总)进行了操作,并提供了该指标的图表。我通过显示状态更新中使用正负词与自我报告的生活满意度(收敛效度)共变量来开始验证该指标,并且还注意到该图显示了具有文化和情感意义的日子中的高峰和低谷(面部)有效性)。我讨论了该度量标准的发展和计算,认为该度量标准和图表可以代表整个国家的整体情绪健康,并讨论了跟踪此类度量标准的重要性。

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