Inferring socioeconomic attributes of social media users such as occupation and income is an important problem in computational social science. Automated inference of such characteristics has applications in personalised recommender systems, targeted computational advertising and online political campaigning. While previous work has shown that language features can reliably predict socioeconomic attributes on Twitter, employing information coming from users' social networks has not yet been explored for such complex user characteristics. In this paper, we describe a method for predicting the occupational class and the income of Twitter users given information extracted from their extended networks by learning a low-dimensional vector repres...
Social media content can be used as a complementary source to the traditional methods for extracting...
International audienceOur usage of language is not solely reliant on cognition but is arguably deter...
Embeddings have gained traction in the social sciences in recent years. Existing work focuses on tex...
Social media content can be used as a complementary source to the traditional methods for extractin...
International audienceThe socioeconomic status of people depends on a combination of individual char...
The rise of social media has opened countless opportunities to explore social science questions with...
Automatically inferring user demographics from social media posts is useful for both social science ...
Automatically inferring user demographics from social media posts is useful for both social science ...
<p>This data set accompanies the following <b>paper</b>:</p><p>Vasileios Lampos, Nikolaos Aletras, G...
Automatically estimating a user’s socioeconomic profile from their language use in social media can...
The recent explosion of social media services like Twitter, Facebook and Google+ has led to an inter...
Stratifying behaviors based on demographics and socioeconomic status is crucial for political and ec...
The rise of social media has opened countless opportunities to explore social science questions with...
Social media content can be used as a complementary source to the traditional methods for extracting...
International audienceOur usage of language is not solely reliant on cognition but is arguably deter...
Embeddings have gained traction in the social sciences in recent years. Existing work focuses on tex...
Social media content can be used as a complementary source to the traditional methods for extractin...
International audienceThe socioeconomic status of people depends on a combination of individual char...
The rise of social media has opened countless opportunities to explore social science questions with...
Automatically inferring user demographics from social media posts is useful for both social science ...
Automatically inferring user demographics from social media posts is useful for both social science ...
<p>This data set accompanies the following <b>paper</b>:</p><p>Vasileios Lampos, Nikolaos Aletras, G...
Automatically estimating a user’s socioeconomic profile from their language use in social media can...
The recent explosion of social media services like Twitter, Facebook and Google+ has led to an inter...
Stratifying behaviors based on demographics and socioeconomic status is crucial for political and ec...
The rise of social media has opened countless opportunities to explore social science questions with...
Social media content can be used as a complementary source to the traditional methods for extracting...
International audienceOur usage of language is not solely reliant on cognition but is arguably deter...
Embeddings have gained traction in the social sciences in recent years. Existing work focuses on tex...