Covering formulation, algorithms, and structural results, and linking theory to real-world applications in controlled sensing (including social learning, adaptive radars and sequential …
Models for the processes by which ideas and influence propagate through a social network have been studied in a number of domains, including the diffusion of medical and …
Several systems can be modeled as sets of interconnected networks or networks with multiple types of connections, here generally called multilayer networks. Spreading …
Q He, X Wang, Z Lei, M Huang, Y Cai, L Ma - Applied Mathematics and …, 2019 - Elsevier
Influence Maximization is an important problem in social networks, and its main goal is to select some most influential initial nodes (ie, seed nodes) to obtain the maximal influence …
Social media has brought a revolution on how people are consuming news. Beyond the undoubtedly large number of advantages brought by social-media platforms, a point of …
State-of-the-art classical influence maximization (IM) techniques are" competition-unaware" as they assume that a group (company) finds seeds (users) in a network independent of …
L Fan, W Wu, X Zhai, K Xing, W Lee, DZ Du - Social Network Analysis and …, 2014 - Springer
The spread of rumor or misinformation in social networks may cause bad effects among the public. Thus, it is necessary to find effective strategies to control the spread of rumor …
Social media and the web have provided a foundation where users can easily access diverse information from around the world. However, over the years, various factors, such as …
Influence maximization deals with identification of the most influential nodes in a social network given an influence model. In this paper, a game theoretic framework is developed …