Open Access
Spreading processes on networks theory and applications
TLDR
This work examines a variety of models covering the intersection of spreading processes and complex network theory, and although they study a large range of problem formulations, it is found that–surprisingly–a single parameter effectively summarizes the topology.Abstract:
The interactions between people, technology and modern communication paradigms form large and complex human--machine networks Complex network theory attempts to address the global and local behavior of such network structures Of particular interest within the area of network theory is understanding the dynamic behavior of spreading processes on complex networks In this work, we examine a variety of models covering the intersection of spreading processes and complex network theory, and although we study a large range of problem formulations, we find that–surprisingly–a single parameter effectively summarizes the topology
We begin by examining the effect that topology has on spreading processes in dynamic networks Dynamic networks are becoming more common due to our increased reliance on and the functionality of mobile devices, smartphones, etc Specifically, we ask, given discrete information spread through a proximity-based communication channel across dynamic network of mobile end-users, what criteria is required such that the information will ultimately die-out; that is, can we determine the tipping point between information survival and die-out? We show analytically that yes, such a threshold exists, yet it is computationally infeasible to calculate To avoid such computationally intensive methods, we go on to provide two approximation methods for determining the tipping point
Next, we analyze the effect of topology on the propagation of competing information Using a novel graph structure we refer to as a composite network, we model the intertwined propagation of competing information across a variety of underlying network layers Through a combination of analytical and empirical methods, we show how the topology affects the competing information, and ultimately, using topology, we predict the winner of competition
Building on the success of the previous analyses, we formulate a model describing the spread of non-categorical information Unlike our previous models, the information in this system is represented by a continuous value We determine the phase transitions of the overall system, relate them to the tipping points in our previous models, and show both analytically and empirically how the structure of the network affects those phase transitions
Ultimately, for each of these models, a single topological parameter, the largest eigenvalue of the adjacency matrix λA ,1, is all that is necessary to characterize the effect of topology on the spreading processread more
Citations
More filters
Journal ArticleDOI
Node Immunization on Large Graphs: Theory and Algorithms
Chen Chen,Hanghang Tong,B. Aditya Prakash,Charalampos E. Tsourakakis,Tina Eliassi-Rad,Christos Faloutsos,Duen Horng Chau +6 more
TL;DR: A novel `bridging' score Dλ is proposed, inspired by immunology, and it is shown that its results agree with intuition for several realistic settings and the proposed fast solution is up to seven orders of magnitude faster than straightforward alternatives.
Journal ArticleDOI
Eigen-Optimization on Large Graphs by Edge Manipulation
Chen Chen,Hanghang Tong,B. Aditya Prakash,Tina Eliassi-Rad,Michalis Faloutsos,Christos Faloutsos +5 more
TL;DR: This paper studies the problem of how to optimally place a set of edges to optimize the leading eigenvalue of the underlying graph, so that the dissemination process in a desired way and proposes effective, scalable algorithms for edge deletion and edge addition, respectively.
Journal ArticleDOI
Interacting Spreading Processes in Multilayer Networks: A Systematic Review
TL;DR: This survey is a first attempt to present the current landscape of the multi-processes spread over multilayer networks and to suggest the potential ways forward.
Journal ArticleDOI
On the eigen‐functions of dynamic graphs: Fast tracking and attribution algorithms
Chen Chen,Hanghang Tong +1 more
TL;DR: A general attribution analysis framework which can be used to identify important structural changes in the evolving process and an error estimation method for the proposed eigen‐functions tracking algorithms to estimate the tracking error at each time stamp are introduced.
Related Papers (5)
Analyzing Complex Network User Arrival Patterns and Their Effect on Network Topologies.
Michael Fire,Carlos Guestrin +1 more