Detecting the Influence of Spreading in Social Networks with Excitable Sensor Networks
April 02, 2015 Β· Declared Dead Β· π PLoS ONE
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Authors
Sen Pei, Shaoting Tang, Zhiming Zheng
arXiv ID
1504.00502
Category
physics.soc-ph
Cross-listed
cs.SI
Citations
18
Venue
PLoS ONE
Last Checked
3 months ago
Abstract
Detecting spreading outbreaks in social networks with sensors is of great significance in applications. Inspired by the formation mechanism of human's physical sensations to external stimuli, we propose a new method to detect the influence of spreading by constructing excitable sensor networks. Exploiting the amplifying effect of excitable sensor networks, our method can better detect small-scale spreading processes. At the same time, it can also distinguish large-scale diffusion instances due to the self-inhibition effect of excitable elements. Through simulations of diverse spreading dynamics on typical real-world social networks (facebook, coauthor and email social networks), we find that the excitable senor networks are capable of detecting and ranking spreading processes in a much wider range of influence than other commonly used sensor placement methods, such as random, targeted, acquaintance and distance strategies. In addition, we validate the efficacy of our method with diffusion data from a real-world online social system, Twitter. We find that our method can detect more spreading topics in practice. Our approach provides a new direction in spreading detection and should be useful for designing effective detection methods.
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