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Seasonal Variation in Collective Mood via Twitter Content and Medical Purchases

机译:通过Twitter内容和医疗购买产生的集体情绪的季节性变化

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The analysis of sentiment contained in vast amounts of Twitter messages has reliably shown seasonal patterns of variation in multiple studies, a finding that can have great importance in the understanding of seasonal affective disorders, particularly if related with known seasonal variations in certain hormones. An important question, however, is that of directly linking the signals coming from Twitter with other sources of evidence about average mood changes. Specifically we compare Twitter signals relative to anxiety, sadness, anger, and fatigue with purchase of items related to anxiety, stress and fatigue at a major UK Health and Beauty retailer. Results show that all of these signals are highly correlated and strongly seasonal, being under-expressed in the summer and over-expressed in the other seasons, with interesting differences and similarities across them. Anxiety signals, extracted from both Twitter and from Health product purchases, peak in spring and autumn, and correlate also with the purchase of stress remedies, while Twitter sadness has a peak in the Winter, along with Twitter anger and remedies for fatigue. Surprisingly, purchase of remedies for fatigue do not match the Twitter fatigue, suggesting that perhaps the names we give to these indicators are only approximate indications of what they actually measure. This study contributes both to the clarification of the mood signals contained in social media, and more generally to our understanding of seasonal cycles in collective mood.
机译:大量Twitter消息中包含的情绪分析已可靠地显示了多项研究的季节性变化模式,这一发现对于理解季节性情感障碍(特别是与某些激素的已知季节性变化有关)可能具有重要意义。但是,一个重要的问题是,如何将来自Twitter的信号与其他有关平均情绪变化的证据来源直接链接起来。具体来说,我们将Twitter与焦虑,悲伤,愤怒和疲劳相关的信号与在英国一家主要的健康和美容零售商购买的与焦虑,压力和疲劳有关的项目进行了比较。结果表明,所有这些信号都高度相关且具有强烈的季节性,在夏季表达不足,而在其他季节则过度表达,它们之间存在有趣的差异和相似之处。从Twitter和从健康产品购买中提取的焦虑信号在春季和秋季达到顶峰,并且与压力疗法的购买也相关,而Twitter的悲伤在冬季达到高峰,以及Twitter的愤怒和疲劳疗法。出人意料的是,购买疲劳疗法与Twitter疲劳并不相符,这表明也许我们为这些指标指定的名称仅是其实际测量值的近似表示。这项研究不仅有助于澄清社交媒体中包含的情绪信号,而且更广泛地有助于我们对集体情绪中的季节性周期的理解。

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