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arxiv: 1612.08205 · v1 · pith:OYMGT2J6new · submitted 2016-12-24 · 💻 cs.CL · cs.SI

Predicting the Industry of Users on Social Media

classification 💻 cs.CL cs.SI
keywords industrysocialmediacontentnumbertaskuseduser
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Automatic profiling of social media users is an important task for supporting a multitude of downstream applications. While a number of studies have used social media content to extract and study collective social attributes, there is a lack of substantial research that addresses the detection of a user's industry. We frame this task as classification using both feature engineering and ensemble learning. Our industry-detection system uses both posted content and profile information to detect a user's industry with 64.3% accuracy, significantly outperforming the majority baseline in a taxonomy of fourteen industry classes. Our qualitative analysis suggests that a person's industry not only affects the words used and their perceived meanings, but also the number and type of emotions being expressed.

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