Seasonal Fluctuations In Collective Mood Revealed By Wikipedia Searches And Twitter Posts

2016 IEEE 16th International Conference on Data Mining Workshops (ICDMW)(2016)

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摘要
Understanding changes in the mood and mental health of large populations is a challenge, with the need for large numbers of samples to uncover any regular patterns within the data. The use of data generated by online activities of healthy individuals offers the opportunity to perform such observations on the large scales and for the long periods that are required. Various studies have previously examined circadian fluctuations of mood in this way. In this study, we investigate seasonal fluctuations in mood and mental health by analyzing the access logs of Wikipedia pages and the content of Twitter in the UK over a period of four years. By using standard methods of Natural Language Processing, we extract daily indicators of negative affect, anxiety, anger and sadness from Twitter and compare this with the overall daily traffic to Wikipedia pages about mental health disorders. We show that both negative affect on Twitter and access to mental health pages on Wikipedia follow an annual cycle, both peaking during the winter months. Breaking this down into specific moods and pages, we find that peak access to the Wikipedia page for Seasonal Affective Disorder coincides with the peak period for the sadness indicator in Twitter content, with both most over-expressed in November and December. A period of heightened anger and anxiety on Twitter partly overlaps with increased information seeking about stress, panic and eating disorders on Wikipedia in the late winter and early spring. Finally, we compare Twitter mood indicators with various weather time series, finding that negative affect and anger can be partially explained in terms of the climatic temperature and photoperiod, sadness can be partially explained by the photoperiod and the perceived change in the photoperiod, while anxiety is partially explained by the level of precipitation. Using these multiple sources of data allows us to have access to inexpensive, although indirect, information about collective variations in mood over long periods of time, in turn helping us to begin to separate out the various possible causes of these fluctuations.
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关键词
Collective Mood,Mental Health,Social Media,Wikipedia,Discrete Fourier Transform,Multiple Tests,Seasonal Cycles
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