Tweetin' in the Rain: Exploring Societal-Scale Effects of Weather on Mood

There has been significant recent interest in using the aggregate sentiment from social media sites to understand and predict real-world phenomena. However, the data from social media sites also offers a unique and — so far — unexplored opportunity to study the impact of external factors on aggregate sentiment, at the scale of a society. Using a Twitter-specific sentiment extraction methodology, we the explore patterns of sentiment present in a corpus of over 1.5 billion tweets. We focus primarily on the effect of the weather and time on aggregate sentiment, evaluating how clearly the well-known individual patterns translate into population-wide patterns. Using machine learning techniques on the Twitter corpus correlated with the weather at the time and location of the tweets, we find that aggregate sentiment follows distinct climate, temporal, and seasonal patterns.

[1]  Bing Liu,et al.  Web Data Mining: Exploring Hyperlinks, Contents, and Usage Data , 2006, Data-Centric Systems and Applications.

[2]  Jonathon Read,et al.  Using Emoticons to Reduce Dependency in Machine Learning Techniques for Sentiment Classification , 2005, ACL.

[3]  Thomas G. Dietterich An Experimental Comparison of Three Methods for Constructing Ensembles of Decision Trees: Bagging, Boosting, and Randomization , 2000, Machine Learning.

[4]  M. Bradley,et al.  Affective Norms for English Words (ANEW): Instruction Manual and Affective Ratings , 1999 .

[5]  Ryan Shaun Joazeiro de Baker,et al.  Case studies in the use of ROC curve analysis for sensor-based estimates in human computer interaction , 2005, Graphics Interface.

[6]  L. F. Barrett,et al.  Affect as a Psychological Primitive. , 2009, Advances in experimental social psychology.

[7]  A. Bouhuys,et al.  Seasonal affective disorder and latitude: a review of the literature. , 1999, Journal of affective disorders.

[8]  Bernardo A. Huberman,et al.  Predicting the Future with Social Media , 2010, Web Intelligence.

[9]  Scott A. Golder,et al.  Diurnal and Seasonal Mood Vary with Work, Sleep, and Daylength Across Diverse Cultures , 2011 .

[10]  Jaap J. A. Denissen,et al.  The Effects of Weather on Daily Mood: a Multilevel Approach , 2008 .

[11]  R. Larsen,et al.  Individual differences in entrainment of mood to the weekly calendar. , 1990, Journal of personality and social psychology.

[12]  Krishna P. Gummadi,et al.  Measuring User Influence in Twitter: The Million Follower Fallacy , 2010, ICWSM.

[13]  Leo Breiman,et al.  Bagging Predictors , 1996, Machine Learning.

[14]  Joshua M. Smyth,et al.  Daily Mood Variability: Form of Diurnal Patterns and Determinants of Diurnal Patterns , 1996 .

[15]  Mirek Riedewald,et al.  The model-summary problem and a solution for trees , 2010, 2010 IEEE 26th International Conference on Data Engineering (ICDE 2010).

[16]  Rich Caruana,et al.  An empirical comparison of supervised learning algorithms , 2006, ICML.

[17]  Christopher M. Danforth,et al.  Temporal Patterns of Happiness and Information in a Global Social Network: Hedonometrics and Twitter , 2011, PloS one.

[18]  S. Sigmon,et al.  Seasonal mood patterns in a northeastern college sample. , 2000, Journal of affective disorders.

[19]  Eric Gilbert,et al.  Widespread Worry and the Stock Market , 2010, ICWSM.

[20]  Daantje Derks,et al.  Emoticons and social interaction on the Internet: the importance of social context , 2007, Comput. Hum. Behav..

[21]  Brendan T. O'Connor,et al.  From Tweets to Polls: Linking Text Sentiment to Public Opinion Time Series , 2010, ICWSM.