Rao, D., D. Yarowsky, A. Shreevats, and M. Gupta. 2010. Classifying latent user attributes in twitter. In Proceedings of the 2nd international workshop on Search and mining user-generated contents, 37–44.

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Online Version

An online version of this paper is available here: [1]

Summary

The authors investigate the use of rich feature sets and stacked SVM based classifiers to classify latent user attributes, including gender, age, regional origin, and political orientation solely from Twitter user language.