Abstract:
A variety of mathematical tools have been developed for predicting the spreading patterns in a number of varied environments including infectious diseases, computer virus...Show MoreMetadata
Abstract:
A variety of mathematical tools have been developed for predicting the spreading patterns in a number of varied environments including infectious diseases, computer viruses, and urgent messages broadcast to mobile agents (e.g., humans, vehicles, and mobile devices). These tools have mainly focused on estimating the average time for the spread to reach a fraction (e.g., α) of the agents, i.e., the so-called average completion time E(Tα). We claim that providing probabilistic guarantee on the time for the spread Tα rather than only its average gives a much better understanding of the spread, and hence could be used to design improved methods to prevent epidemics or devise accelerated methods for distributing data. To demonstrate the benefits, we introduce a new metric Gα,β that denotes the time required to guarantee α completion with probability β, and develop a new framework to characterize the distribution of Tα for various spread parameters such as number of seeds, level of contact rates, and heterogeneity in contact rates. We apply our technique to an experimental mobility trace of taxies in Shanghai and show that our framework enables us to allocate resources (i.e., to control spread parameters) for acceleration of spread in a far more efficient way than the state-of-the-art.
Published in: 2013 Proceedings IEEE INFOCOM
Date of Conference: 14-19 April 2013
Date Added to IEEE Xplore: 25 July 2013
ISBN Information: