Title :
Inferring Directed Static Networks of Influence from Undirected Temporal Networks
Author :
Takaguchi, Taro ; Sato, Nobuyoshi ; Yano, Ken´ichi ; Masuda, Naoki
Author_Institution :
Global Res. Center for Big Data Math., Nat. Inst. of Inf., Tokyo, Japan
Abstract :
A temporal network consists of a time series of interaction events, each of which is defined by a triplet composed of the indices of two nodes and the time of the event. Mapping a temporal network to a more tractable static network is often useful. A mapping method was recently proposed on the basis of the so-called transfer entropy (G. V. Steeg and A. Galstyan, in Proc. the 21st Int. Conf. WWW, p.509, 2012). In the proposed method, one generates the directed network of influence in which a directed link represents the causal relationship between activity patterns at two nodes. However, the significance of the inferred links and the sensitivity of results to the parameter values are still unclear. We propose a bootstrap sampling method to statistically configure the directed network of influence. We apply our method to the face-to-face interaction logs between office workers in Japanese companies.
Keywords :
complex networks; directed graphs; network theory (graphs); time series; Japanese companies; bootstrap sampling method; directed static networks; face-to-face interaction logs; interaction events; office workers; time series; undirected temporal networks; Communities; Companies; Entropy; Informatics; Joints; Probability; Time series analysis; complex networks; data analysis; temporal networks; transfer entropy;
Conference_Titel :
Computer Software and Applications Conference (COMPSAC), 2013 IEEE 37th Annual
Conference_Location :
Kyoto
DOI :
10.1109/COMPSAC.2013.24