News Release

Predicting regional well-being from tweets

Peer-Reviewed Publication

Proceedings of the National Academy of Sciences

Frequent Words from the Linguistic Inquiry and Word Count Positive Emotion dictionary

image: Frequent words from the Linguistic Inquiry and Word Count Positive Emotion dictionary that correlate as expected (top) or unexpected (bottom) with Gallup county happiness. view more 

Credit: Image credit: Kokil Jaidka and Johannes C. Eichstaedt.

A study of 1.53 billion geotagged tweets finds that typical dictionary methods of assessing well-being using positively-connotated or negatively-connotated words produce results inconsistent with surveys of well-being and health in 1,208 counties in the United States; however, the removal of as few as three frequent, misleading words, such as "LOL," "love," or "good," can improve well-being predictions, according to the authors.

Article #19-06364: "Estimating geographic subjective well-being from Twitter: A comparison of dictionary and data-driven language methods," by Kokil Jaidka et al.

MEDIA CONTACT: Kokil Jaidka, National University of Singapore, SINGAPORE; e-mail: jaidka@nus.edu.sg; Johannes Eichstaedt, Stanford University, CA; e-mail: johannes.stanford@gmail.com

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