Publication | Open Access
Studying User Income through Language, Behaviour and Affect in Social Media
223
Citations
51
References
2015
Year
Social Data AnalysisUser IncomeSocial InfluenceSocial Media PostsCommunicationSocial SciencesJournalismComputational Social ScienceSocial MediaAffective ComputingLanguage StudiesContent AnalysisUser DemographicsSocial Medium MiningSociolinguisticsActual User IncomeSocial WebSocial ComputingSociologySocial Medium Data
Automatically inferring user demographics from social media posts is useful for both social science research and a range of downstream applications in marketing and politics. We present the first extensive study where user behaviour on Twitter is used to build a predictive model of income. We apply non-linear methods for regression, i.e. Gaussian Processes, achieving strong correlation between predicted and actual user income. This allows us to shed light on the factors that characterise income on Twitter and analyse their interplay with user emotions and sentiment, perceived psycho-demographics and language use expressed through the topics of their posts. Our analysis uncovers correlations between different feature categories and income, some of which reflect common belief e.g. higher perceived education and intelligence indicates higher earnings, known differences e.g. gender and age differences, however, others show novel findings e.g. higher income users express more fear and anger, whereas lower income users express more of the time emotion and opinions.
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