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Contagion Source Detection in Epidemic and Infodemic Outbreaks - Mathematical Analysis and Network Algorithms
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Contagion Source Detection in Epidemic and Infodemic Outbreaks - Mathematical Analysis and Network Algorithms
Series: Foundations and Trends® in Networking
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The rapid spread of infectious diseases and online rumors share
similarities in terms of their speed, scale, and patterns of
contagion. Although these two phenomena have historically been
studied separately, the COVID-19 pandemic has highlighted the
devastating consequences that simultaneous crises of epidemics and
misinformation can have on the world. Soon after the outbreak of
COVID-19, the World Health Organization launched a campaign against
the COVID-19 Infodemic, which refers to the dissemination of
pandemic-related false information online that causes widespread
panic and hinders recovery efforts. Undoubtedly, nothing spreads
faster than fear. Networks serve as a crucial platform for viral
spreading, as the actions of highly influential users can quickly
render others susceptible to the same. The potential for contagion
in epidemics and rumors hinges on the initial source, underscoring
the need for rapid and efficient digital contact tracing algorithms
to identify super-spreaders or Patient Zero. Similarly, detecting
and removing rumour mongers is essential for preventing the
proliferation of harmful information in online social networks.
Identifying the source of large-scale contagions requires solving
complex optimization problems on expansive graphs. Accurate source
identification and understanding the dynamic spreading process
requires a comprehensive understanding of surveillance in massive
networks, including topological structures and spreading veracity.
Ultimately, the efficacy of algorithms for digital contact tracing
and rumour source detection relies on this understanding. This
monograph provides an overview of the mathematical theories and
computational algorithm design for contagion source detection in
large networks. By leveraging network centrality as a tool for
statistical inference, we can accurately identify the source of
contagions, trace their spread, and predict future trajectories.
This approach provides fundamental insights into surveillance
capability and asymptotic behaviour of contagion spreading in
networks. Mathematical theory and computational algorithms are
vital to understanding contagion dynamics, improving surveillance
capabilities, and developing effective strategies to prevent the
spread of infectious diseases and misinformation.
General
Imprint: |
Now Publishers Inc
|
Country of origin: |
United States |
Series: |
Foundations and Trends® in Networking |
Release date: |
July 2023 |
First published: |
2023 |
Authors: |
Chee Wei Tan
• Pei-Duo Yu
|
Dimensions: |
234 x 156mm (L x W) |
Pages: |
160 |
ISBN-13: |
978-1-63828-250-1 |
Categories: |
Books
Promotions
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LSN: |
1-63828-250-1 |
Barcode: |
9781638282501 |
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