Predicting user personality with social interactions in Weibo
Aslib Journal of Information Management
ISSN: 2050-3806
Article publication date: 1 September 2021
Issue publication date: 13 October 2021
Abstract
Purpose
The purposes of this paper are to (1) explore how personality traits pertaining to the dominance influence steadiness compliance model manifest themselves in terms of user interaction behavior on social media and (2) examine whether social interaction data on social media platforms can predict user personality.
Design/methodology/approach
Social interaction data was collected from 198 users of Sina Weibo, a popular social media platform in China. Their personality traits were also measured via questionnaire. Machine learning techniques were applied to predict the personality traits based on the social interaction data.
Findings
The results demonstrated that the proposed classifiers had high prediction accuracy, indicating that our approach is reliable and can be used with social interaction data on social media platforms to predict user personality. “Reposting,” “being reposted,” “commenting” and “being commented on” were found to be the key interaction features that reflected Weibo users' personalities, whereas “liking” was not found to be a key feature.
Originality/value
The findings of this study are expected to enrich personality prediction research based on social media data and to provide insights into the potential of employing social media data for the purpose of personality prediction in the context of the Weibo social media platform in China.
Keywords
Acknowledgements
This research is supported in part by National Natural Science Foundation, PR China (Grant No. 71974149) and Wuhan University artificial intelligence project (Grant No. 2020AI021).
Citation
Jiang, Y., Deng, S., Li, H. and Liu, Y. (2021), "Predicting user personality with social interactions in Weibo", Aslib Journal of Information Management, Vol. 73 No. 6, pp. 839-864. https://doi.org/10.1108/AJIM-02-2021-0048
Publisher
:Emerald Publishing Limited
Copyright © 2021, Emerald Publishing Limited