Modeling and Simulating the Propagation of Infectious Diseases Using Complex Networks
نویسنده
چکیده
ACKNOWLEDGEMENTS I would like to thank my thesis advisors, who have guided me in the presentation of my thesis, and Shan Mei, with whom I have had many insightful discussions.
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