Towards Discovery of Influence and Personality Traits Through Social Link Prediction

Estimation of a person's influence and personality traits from social media data has many applications. We use social linkage criteria, such as number of followers and friends, as proxies to form corpora, from popular blogging site Livejournal, for examining two two-class classification problem...

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Bibliographic Details
Main Authors: Nguyen, Thin, Phung, Dinh, Adams, Brett, Venkatesh, Svetha
Other Authors: Nicolas Nicolov
Format: Conference Paper
Published: IAAA 2011
Online Access:http://www.aaai.org/ocs/index.php/ICWSM/ICWSM11/paper/view/2772
http://hdl.handle.net/20.500.11937/21742
Description
Summary:Estimation of a person's influence and personality traits from social media data has many applications. We use social linkage criteria, such as number of followers and friends, as proxies to form corpora, from popular blogging site Livejournal, for examining two two-class classification problems: influential vs. non-influential, and extraversion vs. introversion. Classification is performed using automatically-derived psycholinguistic and mood-based features of a user's textual messages. We experiment with three sub-corpora of 10000 users each, and present the most effective predictors for each category. The best classification result, at 80%, is achieved using psycholinguistic features; e.g., influentials are found to use more complex language, than non-influentials, and use more leisure-related terms.