Title :
Community-Aware Prediction of Virality Timing Using Big Data of Social Cascades
Author :
Junus, Alvin ; Cheung Ming ; She, James ; Zhanming Jie
Author_Institution :
HKUST-NIE Social Media Lab., Hong Kong Univ. of Sci. & Technol., Hong Kong, China
fDate :
March 30 2015-April 2 2015
Abstract :
Predicting the virality of contents is attractive for many applications in today´s big data era. Previous works mostly focus on final popularity, but predicting the time at which content gets popular (virality timing), is essential for applications such as viral marketing. This work proposes a community-aware iterative algorithm to predict virality timing of contents in social media using big data of user dynamics in social cascades and community structure in social networks. From the continuously generated big data, the algorithm uses the increasing amount of data to make self-corrections on the virality timing prediction and improve its prediction. Experimental results on viral stories from a social network, Digg, prove that the proposed algorithm is able to predict virally timing effectively, with the prediction error bounded within 30% with 20% of data.
Keywords :
Big Data; iterative methods; social networking (online); Big Data; Digg; community structure; community-aware iterative algorithm; community-aware prediction; content virality prediction; social cascades; social networks; viral marketing; virality timing prediction; Big data; Communities; Data mining; Heuristic algorithms; Prediction algorithms; Social network services; Timing; big data; community structure; social cascade; social networks; virality prediction; virality timing;
Conference_Titel :
Big Data Computing Service and Applications (BigDataService), 2015 IEEE First International Conference on
Conference_Location :
Redwood City, CA
DOI :
10.1109/BigDataService.2015.40