Title :
Identifying Social Influence in Networks Using Randomized Experiments
Author :
Aral, Sinan ; Walker, Dylan
Author_Institution :
New York Univ., New York, NY, USA
Abstract :
The recent availability of massive amounts of networked data generated by email, instant messaging, mobile phone communications, micro blogs, and online social networks is enabling studies of population-level human interaction on scales orders of magnitude greater than what was previ ously possible.1´2 One important goal of applying statistical inference techniques to large networked datasets is to understand how behavioral conta gions spread in human social networks. More pre cisely, understanding how people influence or are influenced by their peers can help us understand the ebb and flow of market trends, product adoption and diffusion, the spread of health behaviors such as smoking and exercise, the productivity of information workers, and whether particular indi viduals in a social network have a disproportion ate amount of influence on the system.
Keywords :
Internet; social networking (online); email; instant messaging; micro blogs; mobile phone communications; networked data; networked datasets; online social networks; randomized experiments; social influence; statistical inference techniques; Behavioral science; Facebook; Peer to peer computing; Social factors; Social network services; causality; cyber-physical-social systems; endogeneity; intelligent systems; peer influence; randomized experiments; social contagion; social networks;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2011.89