Title :
Triadic Closure Pattern Analysis and Prediction in Social Networks
Author :
Hong Huang ; Jie Tang ; Lu Liu ; Luo, JarDer ; Xiaoming Fu
Author_Institution :
Inst. of Comput. Sci., Univ. of Gottingen, Gottingen, Germany
Abstract :
We study the problem of group formation in online social networks. In particular, we focus on one of the most important human groups-the triad-and try to understand how closed triads are formed in dynamic networks, by employing data from a large microblogging network as the basis of our study. We formally define the problem of triadic closure prediction and conduct a systematic investigation. The study reveals how user demographics, network characteristics, and social properties influence the formation of triadic closure. We also present a probabilistic graphical model to predict whether three persons will form a closed triad in a dynamic network. Different kernel functions are incorporated into the proposed graphical model to quantify the similarity between triads. Our experimental results with the large microblogging dataset demonstrate the effectiveness (+10 percent over alternative methods in terms of F1-Score) of the proposed model for the prediction of triadic closure formation.
Keywords :
probability; social networking (online); dynamic network; kernel functions; microblogging network; online social network; probabilistic graphical model; triadic closure pattern analysis; triadic closure pattern prediction; Graphical models; Predictive models; Probabilistic logic; Social factors; Social network services; Predictive model; Social Network; Social influence; Social network; Triadic closure; predictive model; social influence; triadic closure;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2015.2453956